Accounting Ethics
The ‘‘Numbers Game’’ in the Pre- and
Post-Sarbanes-Oxley Eras
ELI BARTOV* DANIEL A. COHEN**
We address two research questions in this study. First, is there a change in the prevalence of expectations management to meet or beat analysts’ earnings expectations in the aftermath of the 2001–2002 accounting scandals and the passage of the 2002 Sarbanes-Oxley Act (SOX)? Second, did the mix among the three mechanisms used for meeting or beating analysts’ earnings expectations: accrual-based earnings man- agement, real earnings management, and expectations management change in the Post-SOX period? We hypothesize and provide empirical evidence that the observed drop in the frequency of just meeting or beating analysts’ earnings expectations is associated with both (1) a decline in the use of downward expectations management and upward accrual-based earnings management in the Post-SOX period relative to the preceding seven-year period and (2) an increase in upward real earnings management activities.
1. Introduction
The accounting literature has documented that missing earnings expectations
is costly to companies, and that managing earnings and/or earnings expectations
to meet or beat analyst earnings expectations—a phenomenon often referred to
as the ‘‘numbers games’’ (Levitt [1998])—is widespread (e.g., DeGeorge, Patel,
and Zeckhauser [1999]; Bartov, Givoly, and Hayn [2002]; Matsumoto [2002]).
Earnings management may be in the form of an accounting action, also known
Keywords: Earnings Management; Real Earnings Management; Analysts’ Forecasts; Expectations Management; Sarbanes-Oxley Act
*New York University **New York University We thank Bala Balachandran (the editor), an anonymous reviewer, Yoel Beniluz, Larry Brown,
Valentin Dimitrov, Kim Dunn, Richard Frankel, Ohad Kadan, Jim Ohlson, Sugata Roychowdhury (the 2008 JAAF conference discussant), Tzachi Zach, and the seminar participants at the 2007 AAA Annual Meetings in Chicago (especially, Mikhail Pevzner, the discussant), NYU doctoral seminar, Georgia State University seminar, Rutgers University seminar, and Washington University in St. Louis seminar for useful comments and suggestions.
505
as accrual-based earnings management (e.g., Dhaliwal, Gleason, and Mills
[2004]) in which certain accruals are manipulated with no direct cash flow effect.
Examples of accrual-based earnings management include underaccruing of
expenses such as bad debt, delaying an asset write-down, or recognizing reve-
nues prematurely. Earnings management may also be in the form of a real eco-
nomic action, also known as real or transaction-based earnings management that
does affect cash flows (e.g., Roychowdhury [2006]). This activity is defined as
management actions with respect to real operating and investing activities that
deviate from normal business practices, where the primary objective is to achieve
certain reporting objectives. Examples include cutting discretionary expenses,
overproducing, or providing price discounts and lenient credit terms to boost
reported income in the short term. Earnings expectations management concerns
walking down analyst earnings expectations so as to transform an otherwise neg-
ative earnings surprise into a positive one (e.g., Bartov, Givoly, and Hayn [2002];
Matsumoto [2002]).
The purpose of this study is to examine two research questions left unan-
swered by prior research in this area. The first is to test for a change in the prev-
alence of analyst expectations management to meet or beat earnings targets
following the major accounting scandals of 2001–2002 at Enron, WorldCom, and
Global Crossing, to name just a few, and the new requirements introduced by the
2002 Sarbanes Oxley Act (SOX). We expect the prevalence of expectations man-
agement to decline in the Post-SOX period for two reasons. First, it may
decrease as a result of the significant attention earnings expectations management
received from the academic literature (e.g., Bartov, Givoly, and Hayn [2002];
Matsumoto [2002]; Jensen, Murphy, and Wruck [2004]), the financial press (e.g.,
McGee [1997]), and regulators (e.g., Levitt [1998]; Johnson [1999]) in the period
surrounding the passage of SOX. Second, corporate governance improvements
introduced by SOX may limit firms’ ability to manage analyst expectations. Still,
it is arguable that expectations management may increase due to a substitution
effect (e.g., Zang [2006]). That is, firms may substitute accrual-based earnings
management with expectations management in the Post-SOX period to meet or
beat certain performance benchmarks.
The second objective of this study is to explain any observed change in the
frequency of meeting or beating analyst earnings expectations in the Post-SOX
period. To that end, we test for a relation between the frequency of meeting or
beating earnings expectations and the prevalence of the three mechanisms used
for meeting or beating analyst earnings targets: accrual-based earnings manage-
ment, real earnings management, and earnings expectations management.
The aftermath of the passage of the Sarbanes-Oxley Act on July 30, 2002,
changed the financial reporting environment significantly. Specifically, Section
201 of SOX prohibits outside auditors from providing nine nonaudit services to
their audit clients (e.g., bookkeeping, appraisals, actuarial services, and invest-
ment-advisory work), and requires that other nonaudit services (e.g., tax services)
be approved in advance by the audit committee. These measures should increase
506 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
auditors’ independence and thus result in higher-quality audit reports. In addition,
companies must provide in their annual reports an assessment of the effective-
ness of internal controls for financial reporting (Section 404), and chief executive
and financial officers (CEOs/CFOs) must certify under oath annual and quarterly
reports (Section 302) and are subject to significant penalties for false certification
(Section 906). These measures should further deter management from fraudulent
financial reporting. Given these expected effects of SOX on auditors and man-
agement, we predict that accrual-based earnings management, in general, and
ability to meet or beat analysts’ earnings expectations, in particular, to decline in
the Post-SOX period.1
With respect to changes in real earnings management, our prediction is not
straightforward. It might be argued that real earnings management to meet or
beat analyst earnings expectations is not expected to decline in the Post-SOX pe-
riod because auditors are unlikely to question this type of activity. For example,
according to CFOs interviewed by Graham, Harvey, and Rajgopal ([2005], 36),
auditors ‘‘cannot readily challenge real economic actions to meet earnings targets
that are taken in ordinary course of action.’’ Should we expect an increase in real
earnings management in the Post-SOX period? The answer to this question is
largely empirical as two conflicting forces may be at work, and it is not clear
which one dominates. On the one hand, the substitution effect (e.g., Cohen, Dey,
and Lys [2008]) suggests that real earnings management will increase to compen-
sate for the decreases in expectations management and accrual management. On
the other hand, according to Zang (2006), managers employ earnings manage-
ment strategies sequentially, that is, they select real manipulation before resorting
to accrual manipulation. This raises the possibility that real manipulation oppor-
tunities might have been exhausted in the Pre-SOX period, and thus no increase
in that activity should be expected in the Post-SOX period notwithstanding the
decreases in earnings and expectations management.
We find that the frequency of just meeting or beating analyst earnings
expectations diminished in the Post-SOX period. Consistent with the evidence in
Cohen, Dey, and Lys (2008) and Lobo and Zhou (2006), we document that
accrual-based earnings management has increased over time before the passage
of SOX and decreased significantly thereafter. More important, we find what has
not been documented before. First, the propensity to manage analyst earnings
expectations to meet or beat their earnings forecasts, which has increased over
time before SOX, has significantly decreased in the Post-SOX period. Second,
we demonstrate that this new finding, together with the findings of declined
accrual-based earnings management and increased real earnings management,
1. Two points to note: (1) Statement on Auditing Standard No. 99 guides auditors to consider the frequency a firm meets earnings expectations when evaluating the risks of fraudulent financial reporting; (2) throughout the paper we use the term Post-Scandal period and Post-SOX period inter- changeably.
507THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
explain the drop in the tendency to meet or beat analyst earnings expectations in
the Post-SOX period.
Our findings make two contributions to the literature. First, they contribute
to the extant academic literature on the earnings expectations and guidance
game. Our results suggest that expectations management as well as the propen-
sity of just meeting or beating analysts’ expectations have both decreased signifi-
cantly in the Post-SOX period. Second and more important, we are the first to
provide an explanation for these findings. Specifically, by being the first to
simultaneously consider all three mechanisms used to just meet or beat analysts’
expectations while controlling for varying economic activities, we show that the
drop in the frequency of just meeting or beating is related to a blend shift in the
three mechanisms used to meet or beat this important earnings benchmark:
accrual-based earnings management and expectations management have both sig-
nificantly declined, whereas real earnings management activities increased. One
implication of this finding is that in the Post-SOX period, investors and other
capital market participants should pay more attention to real earnings manage-
ment activities used to meet certain earnings targets than in the Pre-SOX period.
Section 2 surveys extant literature on mechanisms used to meet or beat ana-
lyst earnings expectations and contrasts it with our work. Section 3 outlines the
sample selection procedure, defines the variables, and describes the data. Section 4
outlines the empirical tests and reports the results. Section 5 summarizes our main
findings and states our conclusions.
2. Background and Motivation
Earnings management to influence accounting appearances and meet or beat
certain benchmarks has been drawing substantial attention from accounting
researchers for decades. While early studies have sought to document the exis-
tence of real earnings management in specific settings (e.g., Hand [1989]; Bartov
[1993]) recent research provides large sample evidence on real earnings manage-
ment activities (e.g., Gunny [2006]; Roychowdhury [2006]; Zang [2006]). In
addition, while accrual-based earnings management has received significant
attention in the literature, more recent studies analyze a new tool used to meet or
beat analysts’ earnings forecasts, an important benchmark: earnings expectations
management (e.g., Bartov, Givoly, and Hayn [2002]; Matsumoto [2002]). Taken
as a whole, these studies demonstrate that companies use all three mechanisms
to meet certain earnings benchmarks.
Recent studies also investigate a possible substitution effect between
accrual-based earnings management and real earnings management. Zang (2006)
examines whether managers use real and accrual manipulations in managing
earnings as substitutes, and also the sequence in which these mechanisms are
employed. She documents a substitution effect between the two and suggests that
managers employ these strategies sequentially—that is, they select real earnings
manipulation before resorting to accrual manipulation. Cohen, Dey, and Lys (2008),
508 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
using annual data, document that accrual-based earnings management increased
steadily in the Pre-SOX period, but decreased significantly thereafter, whereas real
earnings management declined in the Pre-SOX period and increased significantly in
the Post-SOX period. They interpret their results as suggesting that firms switched
from accrual to real earnings management in the Post-SOX period, a behavior
consistent with the substitution effect found by Zang (2006).
In a recent survey, Graham, Harvey, and Rajgopal (2005), report ‘‘strong
evidence’’ that managers engage in real management activities to meet account-
ing targets. In particular, 80 percent of survey participants report that they would
decrease discretionary spending on research and development (R&D), advertis-
ing, and maintenance to meet an earnings benchmark. More than half state that
they would delay starting a new project to meet an earnings target, even if such
a delay entailed a small sacrifice in value. They observe that ‘‘the aftermath of
accounting scandals at Enron and WorldCom and the certification requirements
imposed by the Sarbanes–Oxley Act may have changed managers’ preferences
for the mix between taking accounting versus real actions to manage earnings,’’
but provide little empirical evidence to support this statement (Graham, Harvey,
and Rajgopal [2005], 36).
In this paper, we address two related research questions left unanswered by
prior studies.2 First, we test for a change in the prevalence of expectations man-
agement to meet or beat analysts’ earnings expectations between the Pre- and
Post-SOX periods (our first hypothesis). Academic research (e.g., Lobo and Zhou
[2006]; Cohen, Dey, and Lys [2008]) as well as the popular press has argued that
it became more costly for managers to engage in earnings management activities
in the Post-SOX period because of increased regulatory and auditing scrutiny as
well as more stringent enforcement for securities regulation violations. Given that
earnings management has become more costly in the Post-SOX era, a substitu-
tion effect will lead to an increase in expectations management to meet or beat
analysts’ forecasts. However, an important assumption underlying this prediction
is that managers’ aspirations and thus efforts to meet or beat analysts’ expecta-
tions have not declined between the Pre- and Post-SOX periods. If management
efforts to meet or beat expectations have declined in the Post-Sox period, the
overall frequency of meeting or beating is likely to decline as well, and thus,
ceteris paribus, the prevalence of expectations management will decrease (our
first hypothesis). By carefully measuring expectations management and by divid-
ing our sample period into four subperiods, we document that the frequency
of just meeting or beating analysts’ expectations decreased significantly in the
2. By focusing on meeting or beating an important quarterly benchmark, that is, analysts’ earn- ings forecasts, our study differs from Cohen, Dey and Lys (2008) who examine only the substitution between accrual-based earnings management and real earnings management around SOX. Adding to this stream of the literature, we consider an additional tool used to meet or beat quarterly analysts’ earnings forecasts by explicitly addressing the use of expectations management. As such, our paper is the first to simultaneously consider the three tools used to meet or beat quarterly analysts’ earnings forecasts before and after the passage of SOX.
509THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
Post-SOX period and that expectations management decreased rather than
increased in the Post-SOX period.3
Second and more important, we test for a relation between the decline in the
observed frequency of just meeting or beating expectations in the Post-SOX pe-
riod and a shift in the mix among the three mechanisms used to just meet or beat
analysts’ expectations: accrual-based earnings management, real earnings man-
agement, and earnings expectations management. We hypothesize that the
decline in the frequency of just meeting or beating is related to decreases in
accrual-based earnings management and expectations management, while real
earnings management may have remained unchanged or increased between the
Pre- and Post-SOX periods (our second hypothesis). By being the first to con-
sider all three mechanisms simultaneously while controlling for changes in eco-
nomic activities, we are able to explain the decline in the tendency of just
meeting or beating analysts’ expectations observed in the Post-SOX period.
3. Data
3.1 Sample Selection
We obtain data from the Compustat quarterly files and the Institutional Bro- kerage Estimate System (I/B/E/S) detail files. To be included in our sample, a
firm-quarter observation must first satisfy the following three criteria:4 (1) at
least two individual earnings forecasts (not necessarily by the same individual
analyst) must exist for the quarter, which are at least twenty trading days apart;
(2) the release date of the first earnings forecast we use occurs at least three trad-
ing days after the release of the previous quarter’s earnings report; and (3) the
release date of the second earnings forecast we use precedes the release of the
current quarter’s earnings report by at least three trading days.
The first criterion ensures that there is an initial forecast and a subsequent
forecast revision. These forecasts are required to be separated in time by at least
twenty days so that the second forecast is more likely to represent a true revision
reflecting news arriving to the market after the initial forecast was issued. The
purpose of the second criterion is to prevent ‘‘stale’’ forecasts (i.e., those that are
not revised following the previous quarter’s earnings announcement) from being
included in the analysis. The third criterion ensures that the latest forecast is not
‘‘contaminated’’ by knowledge of the actual earnings number. The total number
3. In a recent concurrent study, Koh, Matsumoto, and Rajgopal (2008) find that the stock mar- ket premium to meeting or just beating analyst expectations has disappeared in the Post-Sox period and that managers rely less on income-increasing discretionary accruals and more on earnings guid- ance to meet or beat analysts’ forecasts in the Post-SOX period. However, Koh, Matsumoto, and Raj- gopal (2008) do not explore the role of real earnings management activities to meet or beat analysts’ earnings forecasts in the Pre-and Post-SOX periods.
4. These selection criteria are consistent with previous research (e.g., Bartov, Givoly, and Hayn 2002).
510 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
of firm-quarter observations meeting the above three criteria is 262,754, which
span the period from January 1987 to December 2006, and represent 10,874 dis-
tinct firms. We refer to this sample as the I/B/E/S Sample.
Tests in the second part of our analysis concerning accruals earnings man-
agement and real earnings management require financial statement information
in addition to the I/B/E/S data. For these tests we impose on our sample firms
three more restrictions: (1) the required financial statement information is avail-
able on the quarterly Compustat database; (2) the firm does not belong to one of
the following three industries: financial institutions (Standard Industry Code [SIC] codes 6000-6999), utilities (SIC codes 4800-4999), or other regulated
industries (SIC codes 4000-4499); and (3) the quarterly earnings surprise relative
to the latest analyst earnings forecast is non-negative.
Similar to previous studies, we imposed the second and third criteria, respec-
tively, because the empirical models we use to estimate accruals and real earn-
ings management do not apply to firms in these industries and because the
second set of tests focuses on firms that meet or beat analysts’ earnings forecasts.
The intersection of these criteria yields a second sample (the Merged Sample) of
87,697 firm-quarter observations, representing 6,186 distinct firms.
3.2 Variable Definitions
To measure the revision in the analyst earnings forecasts, REV, we identify the
first forecast and the last forecast for the quarter. The earliest earnings forecast for
the quarter, Fearliest, is the first forecast for the quarter made subsequent to the
announcement of the previous quarter’s earnings.5 The latest forecast for the quar-
ter, Flatest, is the last forecast for the quarter made before the release of the earnings
announcement for that quarter. REV is the difference between the latest earnings
forecast and the earliest earnings forecast. The earnings surprise for the quarter,
SURP, is defined as the difference between the actual earnings per share number
and the latest forecast for the quarter, EPS � Flatest, both taken from I/B/E/S. Earn-
ings forecast error for the quarter is the difference between the actual earnings per
share number and the earliest forecast for the quarter, EPS � Fearliest. To avoid
classification errors, we used the unadjusted (for stock dividends and split) analyst
earnings forecast per share and unadjusted reported earnings per share to compute
the earnings surprise and earnings forecast error, both taken from I/B/E/S.
Meeting or beating analyst earnings expectations is defined as a zero or posi-
tive (non-negative) earnings surprise, which is the difference between the actual
earnings and the latest forecast for the quarter, SURP ¼ EPS � Flatest � 0. Just
meeting or beating analyst earnings expectations are firm-quarters observations
for which the earnings surprise exceeds analysts’ expectations by a cent per share
or less—that is, $0.00 � SURP � $0.01.
5. We did not consider earnings forecasts for the current quarter made before the release of the previous quarter’s earnings report because their subsequent revision is likely to be correlated with the content of this report rather than with new information about the current quarter’s results.
511THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
3.3 Accrual Management Proxy
We use a cross-sectional model of discretionary accruals, where for each
quarter we estimate the model for every industry classified by its two-digit SIC
code. We estimate the model cross-sectionally to control for industry-wide
changes in economic conditions that affect total accruals and to allow the coeffi-
cients to vary across time (DeFond and Jiambalvo [1994]; Kasznik [1999]).
Our primary model is the modified cross-sectional Jones model (Jones
[1991]), as described in Dechow, Sloan, and Sweeney (1995), applied for quar-
terly data. The modified Jones model is estimated for each two digit SIC-quarter
grouping as follows:
Where:
We use current cash flows from operations, excluding extraordinary items
and discontinued operations (CFO), to calculate accruals. The industry-quarter
specific parameters obtained from eq. (1) are used to estimate firm-quarter spe-
cific nondiscretionary accruals (NDA) as a percent of lagged total assets, adjust-
ing for the change in receivables, DARjq (Dechow, Sloan, and Sweeney [1995]):
Our measure of discretionary accruals, DA, is the difference between .
3.4 Real Earnings Management Proxies
We build on prior studies (Gunny [2006]; Roychowdhury [2006]; Zang
[2006]) to develop our proxies for real earnings management. We consider three
metrics: the abnormal levels of cash flow from operations (CFO), production
costs, and selling, general, and administrative (SG&A) expenses as measures of
real activities manipulation tools.6
TAjq total accruals, defined as earnings minus cash flow for firm j in quarter q;
Assetjq total assets for firm j in quarter q; DSalesjq change in sales for firm j in quarter q; DARjq change in accounts receivables for firm j in quarter q; PPEjq gross property, plant, and equipment for firm j in quarter q;
6. Roychowdhury (2006) uses overall discretionary expenses at the annual level as one of the three proxies for real activities manipulations. Since we are using quarterly data, we cannot use Com- pustat to construct this aggregate measure thus we focus on SG&A expenses that are available on a quarterly basis.
512 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
Firms can accelerate the timing of sales through increased price discounts or
by providing more lenient credit terms. These activities will temporarily increase
sales volumes, which are likely to disappear once the firm reverts to the old pri-
ces. Assuming that the margins are positive, these additional sales will boost cur-
rent period reported earnings. However, for a given sales volume, both price
discounts and more lenient credit terms will result in lower cash flows from
operations in the current period. We first generate the normal levels of CFO using the model developed by Dechow, Kothari, and Watts (1998) as imple-
mented in Roychowdhury (2006) for quarterly data. We express normal CFO as
a linear function of sales and change in sales. To estimate this model, we run the
following cross-sectional regression for each industry and quarter:
Abnormal CFO (A_CFO) is actual CFO minus the normal level of CFO calcu-
lated using the estimated coefficients from eq. (3).
Our second proxy for real earnings management is abnormal production
costs. Managers can increase production more than necessary to increase earn-
ings. When managers produce more units, they can spread the fixed overhead
costs over a larger number of units, thus lowering fixed costs per unit. As long
as the reduction in fixed costs per unit is not offset by any increase in marginal
cost per unit, total cost per unit declines. This decreases reported COGS and the
firm can report higher operating margins. However, the firm will still incur other
production and holding costs that will lead to higher annual production costs rel-
ative to sales, and lower cash flows from operations given sales levels.
Production costs are defined as the sum of cost of goods sold (COGS) and
change in inventory during the quarter. We estimate the normal level of produc-
tion costs as follows:
Abnormal level of production costs (A_PROD) is defined as the residual from
the above cross-sectional regression eq. (4) estimated quarterly for each two-digit
SIC code.
The third empirical proxy for real earnings management is abnormal SG&A
expenses (A_SGA), defined as the residual from the following cross-sectional
regression estimated quarterly for each two-digit SIC code:
Reducing such expenses will boost current period earnings. It could also lead
to higher current period cash flows (at the risk of lower future cash flows) if the
firm generally paid for such expenses in cash.
513THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
To capture the total effects of real earnings management, we combine the
above three individual tools to compute two comprehensive measures of real
earnings management activities. For our first measure, RM1, consistent with
Zang (2006), we multiply abnormal SG&A expenses by negative one (so that the
higher amount, the more likely it is that the firm is cutting SG&A expenses) and
add it to abnormal production costs.7 The higher the amount of this aggregate
measure, the more likely it is that the firm engaged in real earnings management
activities. For the second measure, RM2, again consistent with Zang (2006), we
first multiply abnormal cash flows from operations and abnormal SG&A
expenses by negative one and then aggregate them into one measure. As for
RM2, we multiply the corresponding components by negative one, so that the
higher these amounts, the more likely it is that the firm is engaging in sales
manipulations and cutting discretionary expenditures to manage reported earnings
upward.
We acknowledge that the three individual variables underlying RM1 and
RM2 may have different implications for reported earnings, which may dilute
any results using these aggregated measures. We thus report results correspond-
ing to both the aggregate measures as well as the three individual real earnings
management proxies (A_CFO, A_PROD, and A_SGA).
3.5 Descriptive Statistics
Table 1 presents descriptive statistics for the I/B/E/S Sample (Panel A) and
for the Merged Sample (Panel B). Similar to findings in previous studies, the
results in Panel A show that our sample firms are more likely to deliver a posi-
tive earnings surprise than a negative one. Specifically, while 64.7 percent of
firm-quarters meet or beat analysts’ earnings expectations, only 35.2 percent miss
expectations. In addition, firms are more likely to exhibit a negative forecast
error (41.3% of firm-quarters) than a negative earnings surprise (35.2%). Such
difference is an indication of earnings expectations management, as it is likely
achieved by walking-down expectations. The observed negative forecast revision
(mean ¼ �0.118) is a further indication of earnings expectations management:
in the absence of such activity, the average revision is expected to be zero, not
negative. The results also show that the mean, median, 25 percentile, and 75 per-
centile of firm-size (market capitalization) are, respectively (in millions),
$2,728.27, $367.28, $128.35, and $1,396.37. This indicates that our I/B/E/S Sam-
ple contains a wide range of firm sizes.
Like the results in Panel A, the results in Panel B show that the Merged
Sample is also well diversified in terms of firm-size, and that the two samples
7. We do not multiply A_PROD by negative one because higher production costs, as noted ear- lier, are indicative of overproduction to reduce cost of goods sold. We do not combine abnormal pro- duction costs and abnormal CFO (A_CFO), because in Roychowdhury (2006) the same activities that lead to abnormally high production costs also lead to abnormally low CFO; thus, adding these two amounts leads to double counting.
514 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
TABLE 1
Summary Statistics of Sample Firms
Panel A: Summary statistics, I/B/E/S sample
N Mean Std. Dev. 25% Median 75%
NEG_SURP 262,754 0.352 0.474 0 0.449 1
NEG_FE 262,754 0.413 0.471 0 0 1.000
REV 262,754 �0.118 34.121 �0.023 0 0.006
MBE 262,754 0.647 0.423 0 1.000 1.000
JUSTBEAT 262,754 0.218 0.404 0 0 0
MKTVL 262,754 2728.27 21754.36 128.35 367.28 1396.37
Panel B: Summary statistics, merged sample (I/B/E/S and Compustat)
N Mean Std. Dev. 25% Median 75%
MBE 87,697 0.726 0.328 0 1.000 1.000
JUSTBEAT 87,697 0.273 0.382 0 0 0
ACCRUALS 87,697 �0.011 0.063 �0.026 �0.013 0.006
DA 87,697 0.002 0.043 �0.007 0.005 0.016
ABS_DA 87,697 0.019 0.031 0.005 0.011 0.025
C_INV 87,697 0.004 0.033 �0.003 0 0.013
MKTVL 87,697 2917.37 15967.24 137.69 374.67 1397.67
A_SGA 87,697 0.067 0.059 0.036 0.058 0.117
Variable Definitions:
NEG_SURP is a dummy variable that takes the value of one if earnings surprise for the quarter is negative,
and zero otherwise.
NEG_FE is a dummy variable that takes the value of one if forecast error is negative, and zero otherwise.
REV is forecast revision defined as the difference between the last earnings forecast and the first earnings
forecast for the quarter, Flatest� Fearliest.
MBE is a dummy variable that takes the value of one if the firm meets and/or beats analysts’ expectations
(SURP� 0), and zero otherwise.
JUSTBEAT is a dummy variable that takes the value of one if the firm beats analysts’ expectations by a cent
per share or less ($0.00� EPS� Flatest� $0.01), and zero otherwise.
MKTVL is the market value of equity calculated as the share price times the number of shares outstanding.
ACCRUALS are defined as the difference between income before extraordinary items and cash flows from
operations, adjusted for extraordinary items and discontinued operations.
DA is discretionary accruals, calculated using the modified Jones model.
ABS_DA is the absolute value of discretionary accruals.
C_INV is the change in inventory, scaled by lagged total assets.
A_SGA are SG&A expenses scaled by lagged total assets.
are quite similar in terms of this variable. The results also demonstrate that the
variables underlying the estimation of our earnings management proxies, discre-
tionary accruals, change in inventory, and SG&A—all scaled by lagged total
assets—posses well-behaved properties. That is, their distributions are symmet-
ric around the mean and an outlier observations problem is not a serious
problem.
4. Tests and Results
4.1 Subperiod Analyzed
We partition our sample period into four subperiods (see Figure 1). The first
subperiod analyzed is the Early Pre-Accounting Scandal period extending from
the beginning of the sample period (January 1987) through the end of 1993. The
second subperiod is the Late Pre-Accounting Scandal period from the beginning
of 1994 through the second quarter of 2001. The third subperiod is the Scandal
period, from the beginning of third quarter of 2001 through the second quarter of
2002, and the fourth subperiod is the Post-SOX (Post-Scandal) period, from the
beginning of the third quarter of 2002 through the end of our sample period
(December 2006).
We partition the Pre-Scandal period into two periods, the Early and Late
Pre-Scandal periods, because findings in prior research (e.g., Bartov, Givoly, and
Hayn [2002]; Brown and Caylor [2005]), as well as anecdotal evidence, suggest
that the use of analysts’ estimates as a benchmark for firm performance and the
prevalence of the ‘‘expectations game’’ both increased substantially in the mid-
1990s.8 For the purpose of testing our two hypotheses, the two subperiods of in-
terest are thus the Late Pre-Scandal period and the Post-SOX period.
FIGURE 1
Timeline of Sample Subperiods Analyzed
Note: The sample period begins in January 1987 and ends in December 2006.
8. Several sources began providing earnings benchmarks based on analysts’ forecasts on the Internet only in the mid-1990s. Perhaps the best known, First Call, introduced its service to the Web in 1994.
516 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
4.2 Changes in Frequency of Just Meeting or Beating Analyst
Earnings Expectations
Before testing our two hypotheses, we examine changes in the frequency of
just meeting/beating analysts’ earnings expectations between the Late Pre-Scandal
period and the Post-SOX period. Based on arguments advanced recently (e.g.,
Jensen, Murphy, and Wruck [2004]; Graham, Harvey, and Rajgopal [2005]), we
expect the frequency of just meeting or beating analysts’ expectation to decline in
the Post-SOX period. Figure 2 plots the percentage of firms meeting or beating
analysts’ earnings forecasts by a cent per share or less over the period spanning
the first quarter of 1987 throughout the fourth quarter of 2006. The figure suggests
a decline in the percentage of firms that just meet or beat analysts’ earnings fore-
casts, especially since the early 2000s.
Next, we use both univariate and regression analysis to statistically test for
temporal changes in the frequency of just meeting or beating analysts’ earnings
forecasts. The univariate tests compare the quarterly frequency of firms that meet
or just beat analysts’ expectations across our four sample periods. The results in
Panel A of Table 2 show that the frequency of just meeting or beating increased
FIGURE 2
Percentage of Firms Meeting or Beating Analysts’ Forecasts by
a Cent per Share or Less over Time
Note: The figure represents the percentage of firms just meeting or beating analysts’ earnings
forecasts over time. The figure plots the frequency of JUSTBEAT, a dummy variable that takes the
value of one if the firm-quarter observation beats/meets analysts’ expectations by a cent per share or
less ($0.00 � EPS � Flatest � $0.01).
517THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
between the Early and Late Pre-Scandal periods, from 18.12 percent to 26.81
percent, and that this increase of 8.69 percent is significant at the 1 percent sig-
nificance level. This result is consistent with findings in Bartov, Givoly, and
Hayn (2002) and further highlights that the overall Pre-Scandal period (1987–
2001) is not homogeneous and thus must be disaggregated into the two subper-
iods. Turning to our prediction, the frequency of just meeting or beating analysts’
earnings expectations substantially declines between the Late Pre-Scandal period
and the Post-SOX (Post-Scandal) period, from 26.81 percent to 17.23 percent,
and this decline of 9.58 percent is significant at the 1 percent significance level.
The regression tests for changes in the frequency of just meeting or beating
analysts’ earnings expectations between the four sample subperiods involve esti-
mating the following model:
Where:
FREQt, the dependent variable, is the frequency of firms just meeting or beating
analysts’ earnings expectations in quarter t; PRE94t is a dummy variable that
takes the value of one if quarter t is before the first quarter of 1994 and zero oth-
erwise; SCANt is a dummy variable that takes the value of one if quarter t falls
within the second quarter of 2001 and the second quarter of 2002, and zero oth-
erwise; POSTt is a dummy variable that takes the value of one if quarter t is after
the third quarter of 2002, and zero otherwise.
In terms of eq. (6), the intercept, b0, measures the frequency of just meeting or
beating analysts’ earnings expectations in the Late Pre-Scandal period, and the slope
coefficients, b1, b2, and b3, measure the difference in frequency between the Late
Pre-Scandal period and the Early Pre-Scandal period, and the Scandal period and
the Post-SOX period, respectively. We expect a decline in the frequency between the
Late Pre-Scandal period and the Post-SOX period, that is, b3 < 0. We estimate eq. (6)
over our full sample period, the nineteen years spanning from January 1987 through
December 2006, and thus use eighty quarterly observations. The results displayed in
Panel B of Table 2 are similar to those of the univariate tests reported in Panel A.
Specifically, as predicted, the coefficient on POST is negative, �0.096, and highly
significant (t-statistic ¼ �8.52) indicating a decline in the frequency of just meeting
or beating analysts’ earnings expectations in the Post-SOX period relative to the Late
Pre-Scandal period. Like the univariate results, the regression results also show an
increase in the frequency of just meeting or beating analysts’ expectations between
the Early and Late Pre-Scandal periods indicated by a significantly negative coeffi-
cient (�0.086) on PRE94. Overall, the results in Table 2 are consistent with the pre-
diction that in the Post-SOX (Post-Scandal) period the propensity of just meeting or
beating analysts’ expectations declined relative to the Late Pre-Scandal period.
4.3 Changes in Expectations Management
Our second set of tests for a decline in the prevalence of earnings expecta-
tions management between the Pre- and Post-SOX periods (our first hypothesis)
518 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
TABLE 2
Temporal Analysis of Frequency of Firms Meeting or Beating Analysts’
Expectations by One Cent per Share or Less
Panel A: Univariate analysis of frequencies
1987:Q1–
1993:Q4
(%)
(A)
1994:Q1–
2001:Q1
(%)
(B)
2001:Q2–
2002:Q2
(%)
(C)
2002:Q3–
2006:Q4
(%)
(D)
Frequency of Firms Just
Meet or Beat
18.12 26.81 25.22 17.23
Differences
(B) � (A) 8.69%*
(C) � (B) �1.59%*
(D) � (C) �7.99%*
(D) � (B) �9.58%*
Panel B: Regression analysis of the frequencies
FREQt ¼ b0 þ b1 PRE94t þ b2 SCANt þ b3 POSTt þ et
Variable
Estimate
(t-statistic)
Intercept 0.268
(53.07)
PRE94 �0.086
(�13.08)
SCAN �0.018
(�4.56)
POST �0.096
(�8.52)
N (Quarters) 80
Adj. R2 0.89
*Significant at the 1 percent level, using the test of proportions.
Variable Definitions:
FREQ is the frequency of firms beating analysts’ expectations by a cent per share or less, that is, $0.00 � EPS� Flatest� $0.01
PRE94 is a dummy variable that takes the value of one if the observation is before the first quarter of 1994,
and zero otherwise.
SCAN is a dummy variable that takes the value of one if the observation falls within the third quarter of
2001 through the second quarter of 2002, and zero otherwise.
POST is a dummy variable that takes the value of one if the observation is after the end of the second quarter
of 2002, and zero otherwise.
concerns examining the role interim analyst forecast revisions plays in affecting
the sign of the end-of-quarter earnings surprise. To increase power, we restrict
the analysis to a subsample consisting of firm-quarters that are most likely or
least likely to be affected by expectations management. Specifically, we compare
the observed sign of an earnings surprise with the sign of the earnings surprise
that would have resulted in the absence of an interim forecast revision. In the ab-
sence of an interim revision, the sign of the quarterly earnings surprise would be
the same as the sign of the quarterly forecast error. Observing a negative forecast
error that turns into a positive earnings surprise is thus consistent with expecta-
tions management (walking-down expectations), because it must result from an
excessive downward forecast revision. Likewise, a zero or positive forecast error
that turns into a negative earnings surprise (because of an excessive upward fore-
cast revision) is inconsistent with expectations management. In the absence of
management intervention, the proportion of observations in which the interim
forecast revision offsets the sign of the earnings surprise should be identical
between cases with negative errors and cases with positive errors.
Tables 3, 4, and 5 display the results from tests for a change in earnings expecta-
tions management in the Post-SOX period. Consider the results in Table 3 first. The
TABLE 3
Relative Frequency of Negative Forecast Errors and
Negative Earnings Surprises
Percentage of
Negative Earnings
Surprises (%)
Percentage of
Negative Forecast
Errors (%)
Excess of Negative
Earnings Errors over
Negative Surprise
Cases (%)
(A) (B) (C) ¼ (B) � (A)
All years 35.24 41.35 6.11*
By Subperiods
1987:Q1–1993:Q4 (1) 48.11 51.63 3.52*
1994:Q1–2001:Q2 (2) 32.36 39.87 7.51*
2001:Q3–2002:Q2 (3) 28.64 37.06 8.42*
2002:Q3–2006:Q4 (4) 31.85 36.84 4.99*
Differences
(2) � (1) �15.75* �11.76* 3.99*
(3) � (2) �3.72* �2.81* 0.91*
(4) � (3) 3.21* �0.22 �3.43*
(4) � (2) �0.51 �3.03* �3.54*
Note: The sample consists of 267,547 firm-quarter observations for 1987–2006. Earnings surprise is
the difference between the actual earnings and the latest forecast for the quarter, EPS� Flatest. Forecast error
is the difference between the actual earnings and the earliest forecast for the quarter, EPS� Fearliest. * and ** are significant at the 1 percent and 5 percent levels, using the test of proportions, respectively.
520 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
percentage of negative earnings surprises over the entire sample, 35.24 percent, is sig-
nificantly smaller at the 1 percent significance level than the percentage of negative
forecast errors, 41.35 percent. This result is consistent with expectations management
during the whole sample period whereby analyst earnings forecasts are dampened
during the quarter so as to increase the likelihood of a positive earnings surprise.
Examining the change in the frequency of negative earnings surprises across
our sample subperiods, we note a monotonic increase in the excess of negative
earnings errors over negative earnings surprises in the first three subperiods:
from 3.52 percent in the Early Pre-Scandal period, to 7.51 percent in the Late
Pre-Scandal period, and to 8.42 percent in the Scandal period. However, this
trend reverses in the Post-Scandal period, where the excess percentage of nega-
tive forecast errors over the percentage of negative earnings surprises percentage
declines, not increases, to 4.99 percent from 8.42 percent in the Scandal period.
TABLE 4
Expectation Management: Frequency of Selected
Expectations Paths, by Period
Cases Likely to
be Affected by
Expectations
Management (%)
Cases Less Likely
to be Affected by
Expectations
Management (%)
Difference in
Proportions (%)
All years 29.87 11.23 18.64*
By Subperiod
1987:Q1–1993:Q4 (1) 22.41 13.72 8.69*
1994:Q1–2001:Q2 (2) 37.03 8.50 28.53*
2001:Q3–2002:Q2 (3) 42.07 8.16 33.91*
2002:Q3–2006:Q4 (4) 30.54 11.09 19.45*
Differences
(2) � (1) 14.62* �5.22* 19.84*
(3) � (2) 5.04* �0.34 5.38*
(4) � (3) �11.53* 2.93* �14.46*
(4) � (2) �6.49* 2.59* �9.08
(4) � (1 þ 2) 0.82* 0.02 0.80*
Note: The sample consists of 267,547 firm-quarter observations for 1987–2006. Cases likely to be
affected by expectation management are cases in which the forecast revision turns a negative forecast error
into a positive or zero earnings surprise, scaled by all cases with a negative forecast error. Cases less likely
to be affected by expectation management are cases in which the forecast revision turns a positive or zero
forecast error into a negative earnings surprise, scaled by all cases with a positive or zero-forecast error. The
forecast revision is the difference between the latest forecast and the earlier forecast for the quarter, Flatest� Fearliest. The earnings surprise is the difference between the actual earnings and the latest forecast for the pe-
riod, EPS – Flatest. The forecast error is the difference between the actual earnings and the earliest forecast
for the quarter, EPS� Fearliest. * and ** are significant at the 1 percent and 5 percent levels, using the test of proportions, respectively.
521THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
Tests for statistical significance show that the differences in the excess of nega-
tive earnings errors over negative earnings surprises between each two consecu-
tive subperiods (3.99%, 0.91%, and �3.43%), as well as between the Post-
Scandal period and the Late Pre-Scandal period (�3.54%), are all highly signifi-
cant (significance level better than 1%). This observed pattern in the excess of
negative earnings errors over negative earnings surprises throughout the sample
period is consistent with the hypothesis that earnings expectations management
has become less prevalent in the Post-SOX period.
The results in Table 4 corroborate our inference of declined expectations man-
agement in the Post-SOX period. In this table, we determine the proportion of
TABLE 5
Temporal Analysis of Expectations Management
Model: EXP_M_It ¼ a0 þ b1 PRE94t þ b2 SCANt þ b3 POSTt þ et
EXP_M_1 EXP_M_2 EXP_M_3
Intercept 0.151
(35.62)
0.353
(43.25
0.268
(58.64)
PRE94 �0.024
(�4.72)
�0.134
(�12.49)
�0.052
(�9.32)
SCAN 0.022
(2.04)
0.059
(3.18)
0.049
(5.03)
POST �0.031
(�8.35)
�0.042
(�4.65)
�0.028
(�3.65)
N (Quarters) 80 80 80
Adj. R2 0.63 0.88 0.84
Note: t-statistics are reported in parentheses.
Variable Definitions: EXP_M_1 is the percentage of firm-quarters with a zero or positive earnings surprise and a negative
forecast error, relative to total number of quarterly observations.
EXP_M_2 is the percentage of firm-quarters with a zero or positive earnings surprise and a negative
forecast error, relative to total number of quarterly observations with negative forecast errors.
EXP_M_3 is the percentage of firm-quarters with a zero or positive earnings surprise and a negative
forecast revision, relative to total number of quarterly observations.
Earnings surprise is the difference between the actual earnings and the latest forecast for the quarter,
EPS� Flatest.
Forecast error is the difference between the actual earnings and the earliest forecast for the quarter,
EPS� Fearliest.
Forecast revision is the difference between the last earnings forecast and the first earnings forecast for
the quarter, Flatest� Fearliest.
PRE94 is a dummy variable that takes the value of one if the observation is before the first quarter of
1994, and zero otherwise.
SCAN is a dummy variable that takes the value of one if the observation falls within the period, third
quarter of 2001 through the second quarter of 2002, and zero otherwise.
POST is a dummy variable that takes the value of one if the observation is after the end of the second
quarter of 2002, and zero otherwise.
522 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
firm-quarters with a negative forecast error that ends with a positive or zero
earnings surprise, and the proportion of firm-quarter observations with a posi-
tive or zero forecast error that ends with a negative earnings surprise. Observa-
tions that belong to the first group are more likely to result from expectations
management than those in the second group. To test for a decline in expecta-
tions management, we examine the difference between these two proportions.
Similar to the pattern observed in Table 3, the difference in proportions
increases in the first three subperiods and decreases in the fourth. More specifi-
cally, in the Late Pre-Scandal period, 37.03 percent of the firm-quarters with a
negative forecast error ended with a positive earnings surprise (as a result of an
excessive downward revision in earnings forecasts). In contrast, only 8.5 per-
cent of observations with a positive or zero forecast error ended with a negative
earnings surprise (because of an excessively positive forecast revision that
‘‘spoiled’’ what otherwise would have been a positive earnings surprise). The
statistically significant difference between the two of 28.53 percent, shown in
the rightmost column, suggests the presence of expectations management in the
Late Pre-Scandal period. In the Post-SOX period forecast revisions are also
more likely to turn a negative forecast error into a positive or zero surprise than
to turn a positive or zero forecast error into a negative earnings surprise
(30.54% compared with 11.09%). However, the difference between the two is
only 19.45 percent, lower by 9.08 percent than the 28.53 percent difference
observed for the Late Pre-Scandal period. The last line of the rightmost column shows
that this 9.08 percent decline is statistically significant at the 1 percent level. Thus, sim-
ilar to the results displayed in Table 3, the results in Table 4 also suggest a lower
propensity to manage analysts’ expectations in the Post-SOX period.
An important point emerges from analyzing the evidence in Table 4. Recall
that we divide the Pre-Scandal period into two subperiods and compare the Post-
SOX period to the latter rather than to the whole Pre-Scandal period. We made
this choice since, as discussed above, the Early and Late Pre-Scandal periods are
inherently different (Bartov, Givoly, and Hayn [2002]; Brown and Caylor [2005]).
To see this, note that the percentage of cases likely to be affected by expectations
management has declined between the Late Pre-Scandal period and the Post-SOX
period, from 37.03 percent to 30.54 percent, consistent with a decline in expecta-
tions management. However, this percentage has increased, not decreased, between
the Early Pre-Scandal period (22.41%) and the Post-SOX period (30.54%). Simi-
larly, the percentage of cases less likely to be affected by expectations manage-
ment has decreased from 13.72 to 11.09 percent, not increased, between the Early
Pre-Scandal Period and the Post-SOX period. Given these differences between the
Early and Late Pre-Scandal periods, combining the two together and then compar-
ing them to the Post-SOX period should lead to the inference that expectations
management has increased in the Post-SOX period, rather than decreased. This
intuition is confirmed by the numbers displayed in the last two lines of the right-
most column. Although the difference in the proportions is significantly negative
(�9.08%) when the Late Pre-Scandal period is compared with the Post-SOX
period, it is significantly positive (0.80%) when the Pre-Scandal period as a whole
523THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
is compared with the Post-SOX period.9 This analysis highlights the importance of
dividing the Pre-Scandal period into two subperiods to avoid contamination by
low expectations management frequency in the Early Pre-Scandal period, during
which time the use of analyst estimates as a benchmark for firm performance and
the ‘‘expectations game’’ were both at their infancy.
To further test for a decline in expectations management, we estimate the
following regression model:
Where:
EXP_M_Jt, the dependent variable (J ¼ 1, 2, or 3), is the proportion of firm-quar-
ters likely to be affected by expectations management in quarter t; PRE94t is a
dummy variable that takes the value of one if quarter t falls before the first quarter
of 1994 (i.e., within the Early Pre-Scandal period), and zero otherwise; SCANt is a
dummy variable that takes the value of one if quarter t falls within the second
quarter of 2001 through the second quarter of 2002 (i.e., within the Scandal
period), and zero otherwise; POSTt is a dummy variable that takes the value of one
if the quarter t is after the third quarter of 2002 (i.e., within the Post-SOX period).
In terms of eq. (7), the intercept, a0, measures the proportion of firm-quarters
likely to be affected by expectations management in the Late Pre-Scandal period,
and the slop coefficients, b1, b2, and b3, measure the difference in proportion
between the Late Pre-Scandal period and the Early Pre-Scandal period, and
between the Scandal period and the Post-SOX period, respectively. The hypothesis
of a decline in expectations management in the Post-SOX period relative to the
Late Pre-Scandal period implies: b3 < 0.
The regression results are reported in Table 5. Note that the dependent vari-
able is measured in three alternative ways. For consistency across tables,
EXP_M_2 is similar to our definition of the percentage of cases likely to be
affected by expectation management in the previous table (see Table 4). In addi-
tion, we consider two alternative measures, EXP_M_1, where the deflator is the
total number of quarterly observations, rather than total number of quarterly
observations with negative forecast errors, and EXP_M_3, which is defined as
the percentage of firm-quarters with a zero or positive earnings surprise and a
negative forecast revision, relative to total number of quarterly observations. We
estimate eq. (7) throughout the full sample period that spans the nineteen-year
period, January 1987 through December 2006, and thus use eighty quarterly
observations. The results in Table 5 reinforce the results from the univariate
9. The overall evidence reported in Table 4 helps reconcile our findings with the results docu- mented in Koh, Matsumoto, and Rajgopal (2008) who find that expectations management increased rather than decreased in the Post-SOX period. The difference in findings follows from our research design choice to divide the Pre-Scandal period into two subperiods and to compare the Post-SOX period with the latter period rather than to the whole Pre-Scandal period as Koh, Matsumoto, and Rajgopal (2008) do.
524 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
results in Tables 3 and 4. As hypothesized, b3, the coefficient on POST, is signif-
icantly negative for all three specifications of the dependent variable.
In summary, the results in Tables 3, 4, and 5 are all consistent with earnings
expectations being managed so as to result in positive earnings surprises in both
the Late Pre-Scandal period and the Post-SOX period. In particular, downward
revisions are encouraged when, in their absence, the earnings surprise is expected
to be negative, while upward revisions are discouraged if they might lead to a neg-
ative earnings surprise. More important, the results in all three tables are consistent
with our first hypothesis of a significant decline in expectations management in
the Post-SOX period relative to the Late Pre-Scandal period.
4.4 Changes in the Blend among the Three Mechanisms to Just Meet or
Beat Analysts’ Expectations
What may explain the overall observed decline in the frequency to just meet
or beat analysts’ expectations? Our second hypothesis predicts that the decline in
the frequency of just meeting or beating analysts’ expectations mirrors a mix
shift among the mechanisms used to meet or just beat analysts’ earnings expecta-
tions. In the next section, we explicitly test this hypothesis by simultaneously
considering three mechanisms: accrual-based earnings management, expectations
management, and real earnings management.
We first provide a univariate analysis on the various tools used to just meet or
beat analysts’ expectations by a cent per share or less (i.e., JUSTBEAT). Table 6
reports the distribution of firms that use accrual-based earnings management,
expectations management, and real earnings management to just meet or beat ana-
lysts’ expectations. The proportion of firm-quarters that JUSTBEAT is more likely
to have been driven by accrual-based earnings management are identified by sub-
tracting the amount of unexpected accruals (calculated using the modified Jones
model) from the reported earnings and then recomputing the earnings surprise
(SURP) for all these cases to determine whether or not they remain designated as
JUSTBEAT after adjusting for unexpected accruals. Similarly, we identify JUST- BEAT firm-quarter observations that are more likely to represent expectations man-
agement, which we identify as cases with a negative forecast error that end with a
zero or positive earnings surprise. Finally, we identify the proportion of firm-quar-
ters that JUSTBEAT is more likely to have been driven by real earnings manage-
ment activities. We adjust the reported earnings of all JUSTBEAT cases by the
value of A_CFO, A_PROD, or A_SGA and then recompute the earnings surprise
(SURP) for all these cases to determine whether or not they still remain designated
as JUSTBEAT after adjusting for unexpected real earnings management activities.10
10. We use either one of the real earnings management proxies to address the possibility that a firm might be using different real earnings management strategies to meet or beat analysts’ expecta- tions. For example, if a firm remains designated as a JUSTBEAT observation after adjusting for A_PROD but not using A_SGA (and vice versa), we still classify this observation as more likely to be driven by real earnings management activities.
525THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
The evidence in Table 6 suggests that the proportion of firm-quarter observations
that rely more on accrual-based earnings management to just meet or beat analyst
expectations has declined to 38.68 percent in the Post-SOX period compared with
46.34 percent in the Late Pre-Scandals period (w2 = 67.36, p-value < 0.001). In
addition, we document that 6.53 percent of firms rely on expectations management
to just meet or beat analyst expectation in the Post-SOX period, which is lower than
the proportion of firms in the Late Pre-Scandal period (7.64%, w2 ¼ 38.96, p-value
< 0.001). Finally, our results suggest that there is an increase in the proportion of
TABLE 6
Univariate Analysis of Firms that Just Meet or Beat Analysts’ Expectations
1987:Q1–
1993:Q4 (%)
Early
Pre-Scandals
1994:Q1–
2001:Q1 (%)
Late
Pre-Scandals
2001:Q2–
2002:Q2 (%)
Scandals
2002:Q3–
2006:Q4 (%)
Post-SOX
Proportion of Firms Relying on
Accrual-Based Earnings
Management
53.38% 46.34% 41.27% 38.68%
w2 Statistic versus Post-SOX 87.32
(<0.001)
67.36
(<0.001)
42.68
(<0.001)
Proportion of Firms Relying on
Expectations Management
4.29% 7.64% 8.73% 6.53%
w2 Statistic versus Post-SOX 96.24
(<0.001)
38.96
(<0.001)
15.39
(<0.001)
Proportion of Firms Relying on
Real Earnings Management
15.38% 15.79% 16.14% 21.16%
w2 Statistic versus Post-SOX 42.93
(<0.001)
53.67
(<0.001)
65.91
(<0.001)
Note: For JUSTBEAT firms, that is, firm-quarter observations that beat or meet analysts’ expectations
by a cent per share or less ($0.00� EPS � Flatest� $0.01), we report the proportion of firms that are more
likely to use accrual-based earnings management, expectations managements, or real earnings management
activities.
The proportion of firm-quarters that JUSTBEAT is more likely to have been driven by accrual-based
earnings management are identified by subtracting the amount of unexpected accruals (calculated using the
modified Jones model) from the reported earnings and then recomputing the earnings surprise (SURP) for
all these cases to determine whether or not they still remain designated as JUSTBEAT after adjusting for
unexpected accruals.
The proportion of firm-quarters that JUSTBEAT is more likely to represent expectations management
are identified as cases with a negative forecast error that end with a zero or positive earnings surprise.
The proportion of firm-quarters that JUSTBEAT is more likely to have been driven by real earnings
management activities are identified by adjusting the reported earnings of all JUSTBEAT cases by the value
of A_CFO, A_PROD, or A_SGA and then recomputing the earnings surprise (SURP) for all these cases to
determine whether or not they still remain designated as JUSTBEAT after adjusting for unexpected real
earnings management activities.
526 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
firms that use real earnings management activities in the Post-SOX period (21.16%)
to just meet/beat analysts’ expectations compared to the Late Pre-Scandal period
(15.79%) and that this finding is statistically significant (w2 ¼ 53.67, p-value <
0.001).
Next, we perform a multivariate analysis to test for any change in the mix
of strategies used to just meet or beat analyst expectations and estimate the fol-
lowing logit model:
Where:
JUSTBEAT, the dependent variable, is a binary variable taking the value of one
if the firm-quarter observation beats or meets analyst earnings expectations by
a cent per share or less, and zero otherwise; PRE94t is a dummy variable that
takes the value of one if quarter t falls before the first quarter of 1994 (i.e.,
within the Early Pre-Scandal period), and zero otherwise; SCANt is a dummy
variable that takes the value of one if quarter t falls within the second quarter
of 2001 through the second quarter of 2002 (i.e., within the Scandal period),
and zero otherwise; POSTt is a dummy variable that takes the value of one if
the quarter t is after the end of the second quarter of 2002 (i.e., in the Post-
SOX period); DA is discretionary accruals calculated using the modified Jones
model; EXP_M is a dummy variable taking the value of one if earnings surprise
for the quarter is zero or positive and analyst earnings forecast revision is nega-
tive, and zero otherwise, where earnings surprise is the difference between the
actual earnings number and the latest earnings forecast for the quarter, and
forecast revision is the difference between the last earnings forecast and the
first earnings forecast for the quarter; REAL_EM is a proxy for real earnings
management and is either: A_CFO, A_PROD, A_SGA, RM1, or RM2 where
A_CFO are abnormal cash flow from operations, A_PROD are abnormal pro-
duction costs, A_SGA are abnormal SG&A expenses, and RM1 and RM2 are
the aggregate proxies for real earnings management activities. Dummy varia-
bles for fiscal quarters Q1, Q2, and Q3 are included (not tabulated) in each of
the estimated models.
527THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
In testing for a mix shift among the three mechanisms used to meet or just beat
analysts’ earnings expectations between the Late Pre-Scandal period and Post-SOX
period, the variables of interests in terms of eq. (8) are as follows: b16, the coefficient
on DA*POST, b19, the coefficient on EXP_M*POST, and b22, the coefficient on
REAL_EM*POST. Our second hypothesis predicts: b16 < 0, b19 < 0, and b22� 0.
4.5 Control Variables
We include numerous control variables in eq. (8) consistent with prior
research (e.g., Matsumoto [2002]; Skinner and Sloan [2002]): varying macroeco-
nomic conditions, firm size, growth opportunities, unexpected shocks to earnings,
and the uncertainty in the forecasting environment. As proxies for unexpected
macroeconomic shocks, we include GDP and IND_ROA, which may affect earn-
ings management and expectations management strategies. GDP is the percent-
age change in seasonally adjusted Gross Domestic Products over the previous
quarter (a proxy of overall economic activity); and IND_ROAjq is the average
return on assets of firm i’s two-digit industry (a proxy for industry-specific eco-
nomic activity), computed after excluding the return on assets of firm i. Guenther
and Young (2000) provide evidence of a high association between ROA and eco-
nomic growth rate, indicating that ROA reflects real economic activity in a
timely manner. We exclude the firm in calculating the average industry ROA to
avoid any mechanical associations among the variables in the regression. We
define P_UE, a dummy variable that takes the value of one where we observe a
positive seasonal change in quarterly earnings before extraordinary items. This
variable controls for the association between the change in earnings and the
probability of just meeting or beating the analyst forecast.
To control for any systematic variation in the frequency of just meeting or beat-
ing analysts’ expectations with growth opportunities and firm size we include SIZE and M_B, where SIZE is the natural logarithm of the market value of equity at the be-
ginning of the quarter and M_B is the ratio of market value of equity to book value of
equity. We control for uncertainty in the forecasting environment by including the
absolute value of the forecast error, ABS_FE, where the forecast error is defined as
before, that is, the difference between the actual earnings per share number and the
earliest forecast for the quarter, EPS—Fearliest. Finally, we include the number of
analysts following the firm in a given quarter, ANALYST, as prior research (e.g.,
Kasznik and McNichols [2002]) suggests that this variable might be associated with
the probability of meeting or beating analysts’ forecasts.
Table 7 documents the estimation results for the logistic model specified in
eq. (8). Since a firm can enter our sample numerous times, there might be some
within-firm autocorrelation of the errors terms. To address this concern, we esti-
mate eq. (8) using a generalized linear model to correct for time dependence
errors within firms based on Liang and Zeger (1986).11 Reading across Table 7,
11. Our conclusions remain the same once we use standard logistic regressions.
528 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
we note three salient points. First, the results reported in all five columns are
similar, indicating they are robust to the proxy used for real earnings manage-
ment. Second, the coefficients on DA (b11), EXP_M (b12), and REAL_EM (b13)
are all significant in the predicted direction with the exception of the coefficient
estimate on abnormal cash flows from operations (column 1, p-value of 0.139).
This suggests that in the Late Pre-Scandal period all three mechanisms—accrual-
based earnings management, expectations management, and real earnings man-
agement—were used to just meet or beat analysts’ earnings expectations. This
implies that these tools to just meet or beat analysts’ forecasts are used as com-
plements. Third, as predicted, the coefficient b16 (DA*POST), ranging from
�1.124 to �1.243 depending on the proxy used for real earnings management,
and the coefficient b19 (EXP_M*POST), ranging from �0.156 to �0.173, are
both statistically significantly negative, and b22 (REAL_EM*POST) is significant
for increasing abnormal production costs and cutting SG&A expenses, as well as
for the two aggregate real earnings management proxies. These results suggest
that consistent with our second hypothesis the drop in the frequency of just meet-
ing or beating in the Post-SOX period relative to the preceding seven-year period
is associated with an overall decline in the use of earnings expectations manage-
ment and accrual-based earnings management, whereas real earnings manage-
ment increased as manifested in higher abnormal production costs and decreasing
SG&A expenses.12
Overall, the reported evidence is consistent with a substitution between
accrual-based, real earnings management activities and downward earnings guid-
ance used to meet or beat an important quarterly benchmark such as analysts’
forecasts in the Post-SOX period.
4.6 Robustness Tests
In this section, we assess the reliability of our findings by considering two
types of sensitivity tests. First, a criticism of discretionary accruals models is
their classification of nondiscretionary accruals as discretionary. To address this
concern, we assess the sensitivity of our findings in Table 7 after computing dis-
cretionary accruals using two alternative models. First, previous research has
shown that measures of unexpected accruals are more likely to be incorrectly
specified for firms with extreme levels of performance. In particular, Dechow,
Sloan, and Sweeney (1995) and Kasznik (1999) document that estimated discre-
tionary accruals are negative for firms with low earnings and positive for firms
with high earnings. To address this concern, we adjust the modified Jones model
12. Although we find abnormal cash flows from operations to be negatively associated with the probability of just meeting or beating analysts’ forecasts, the coefficient estimate is not statistically significant at conventional levels. One explanation might be that some real activities manipulations, such as channel stuffing, might be captured by discretionary accruals. When we run a specification in which we exclude discretionary accruals as an explanatory variable and include only abnormal cash flows as an independent variable, we find it to load significantly in the predicted direction consistent with this explanation.
529THE ‘‘NUMBERS GAME’’ IN THE PRE- AND POST-SARBANES-OXLEY ERAS
TABLE 7
Logit Analysis of Firms that Just Meet or Beat Analysts’ Expectations
Variable A_CFO A_PROD A_SGA RM1 RM2
Intercept 0.276
(<0.0001)
0.279
(<0.0001)
0.288
(<0.0001)
0.251
(<0.0001)
0.243
(<0.0001)
PRE94 �0.093
(<0.0001)
�0.096
(<0.0001)
�0.097
(0.019)
�0.092
(<0.0001)
�0.089
(0.008)
SCAN �0.006
(0.154)
�0.008
(0.132)
�0.009
(0.131)
�0.006
(0.124)
�0.005
(0.121)
POST �0.019
(0.039)
�0.018
(0.027)
�0.011
(0.021)
�0.017
(0.026)
�0.016
(0.039)
GDP 0.037
(<0.0001)
0.042
(<0.0001)
0.039
(<0.0001)
0.036
(<0.0001)
0.041
(<0.0001)
IND_ROA 0.127
(<0.0001)
0.134
(<0.0001)
0.142
(<0.098)
0.124
(<0.0001)
0.129
(<0.0001)
SIZE 0.041
(<0.0001)
0.038
(<0.0001)
0.042
(<0.0001)
0.029
(<0.0001)
0.034
(<0.0001)
M_B 0.012
(<0.0001)
0.014
(<0.0001)
0.011
(<0.0001)
0.012
(<0.0001)
0.013
(<0.0001)
P_UE 1.241
(<0.0001)
1.184
(<0.0001)
1.226
(<0.0001)
1.176
(<0.0001)
1.217
(<0.0001)
ABS_FE �18.351
(<0.0001)
�12.354
(<0.0001)
�14.324
(<0.0001)
�13.674
(<0.0001)
�14.329
(<0.0001)
ANALYST 0.607
(<0.0001)
0.591
(<0.0001)
0.619
(<0.098)
0.584
(<0.0001)
0.596
(<0.0001)
DA 2.109
(<0.0001)
2.206
(<0.0001)
2.131
(<0.0001)
2.224
(<0.0001)
2.154
(<0.0001)
EXP_M 0.239
(<0.0001)
0.252
(<0.0001)
0.249
(<0.0001)
0.281
(<0.0001)
0.267
(<0.0001)
REAL_EM �0.072
(0.139)
0.423
(0.003)
�0.129
(0.081)
0.213
(0.073)
0.174
(0.049)
DA*PRE94 1.452
(<0.0001)
1.568
(<0.0001)
1.436
(<0.0001)
1.549
(<0.0001)
1.517
(<0.0001)
DA*SCAN �0.804
(<0.0001)
�0.824
(0.021)
�0.842
(0.008)
�0.851
(0.041)
�0.829
(0.004)
DA*POST �1.124
(0.013)
�1.213
(0.012)
�1.235
(0.004)
�1.209
(0.021)
�1.243
(0.005)
EXP_M*PRE94 �0.134
(<0.0001)
�0.141
(<0.0001)
�0.146
(<0.0001)
�0.152
(<0.0001)
�0.155
(<0.0001)
EXP_M*SCAN 0.221
(0.006)
0.216
(0.001)
0.214
(0.006)
0.212
(0.003)
0.216
(0.004)
EXP_M*POST �0.156
(0.003)
-0.162
(0.007)
�0.168
(0.003)
�0.173
(0.004)
�0.163
(0.006)
REAL_EM*PRE94 0.017
(0.334)
0.024
(0.524)
�0.031
(0.236)
0.039
(0.227)
0.032
(0.353)
REAL_EM*SCAN 0.014
(0.328)
0.037
(0.241)
�0.114
(0.460)
0.034
(0.181)
0.074
(0.243)
REAL_EM*POST �0.114
(0.113)
0.249
(0.038)
�0.381
(0.046)
0.192
(0.021)
0.114
(0.036)
No. of
Observations
87,697 87,697 82,274 82,274 82,274
Log-Likelihood
Ratio
2371.58 2463.24 2247.96 2687.72 2703.34
Note: The logistic model is estimated using the generalized linear model method to correct for within-
firm time dependence. P-values are reported in parentheses.
JUSTBEAT, the dependent variable is a binary variable taking the value of one if the firm-quarter ob-
servation beats or /meets analysts’ expectations by a cent per share or less ($0.00� EPS-Flatest� $0.01).
PRE94 is a dummy variable that takes the value of one if the observation is before the first quarter of
1994, and zero otherwise.
SCAN is a dummy variable that takes the value of one if the observation falls within the third quarter
of 2001 through the second quarter of 2002, and zero otherwise.
POST is a dummy variable that takes the value of one if the observation is after the end of the second
quarter of 2002, and zero otherwise.
GDP is percentage change in seasonally adjusted GDP over the previous quarter.
IND_ROA is the industry average ROA for the quarter, calculated for each two-digit SIC code.
SIZE is the natural logarithm of the market value of equity at the beginning of the quarter.
M_B is the ratio of market value of equity to book value of equity.
P_UE is a dummy variable that takes the value of one if there is a positive seasonal change in quarterly
earnings before extraordinary items.
ABS_FE is the absolute value of the forecast error, where the forecast error is defined as the difference
between the actual earnings per share number and the earliest forecast for the quarter, EPS� Fearliest.
ANALYST is the number of analysts following the firm in a given quarter.
DA is defined as discretionary accruals calculated using the modified Jones-model.
EXP_M is a dummy variable taking the value of one if earnings surprise for the quarter is zero or posi-
tive and analysts’ forecast revision is negative.
Earnings surprise is the difference between the actual earnings and the latest forecast for the quarter,
EPS� Flatest.
Forecast error is the difference between the actual earnings and the earliest forecast for the quarter,
EPS� Fearliest.
Forecast revision is the difference between the last earnings forecast and the first earnings forecast for
the quarter, Flatest� Fearliest.
REAL_EM is a proxy for real earnings management activities and is either: A_CFO, A_PROD, A_SGA, RM1, or RM2.
A_CFO is abnormal cash flow from operations, measured as the deviations from the predicted values
from the corresponding industry-quarter regression:
A_PROD is abnormal production costs, measured as the deviations from the predicted values from the
corresponding industry-quarter regression:
A_SGA is abnormal sales, general and administration expense measured as deviations from the pre-
dicted values from the corresponding industry-quarter regression:
RM1 is an aggregate measure of real earning management activities and is calculated as the sum of
abnormal SG&A expenses multiplied by negative one and abnormal production costs.
RM2 is an aggregate measure of real earnings management activities and is the sum of abnormal cash
flows and abnormal SG&A expenses, both multiplied by negative one.
Dummy variables for fiscal quarters Q1, Q2, Q3 are included (not tabulated) in each of the estimated
models.
TABLE 7 (Continued )
by including a measure of current operating performance—that is, the current
cash flows from operations excluding extraordinary items, as a control variable.
Our discretionary accrual model becomes:
A second alternative builds on the discussion in McNichols (2002), Dechow,
Richardson, and Tuna (2003), and Larcker and Richardson (2003). Since accruals
are changes in working capital accounts, one would expect fast-growing firms to
have larger accruals (McNichols [2002]). In line with this prediction, we include
the book-to-market ratio (BM) as a proxy for expected growth in firm’s opera-
tions. BM is measured as the ratio of the book value of common equity to the
market value of common equity:
The industry-quarter specific parameters obtained from eqs. (9) and (10),
respectively, are used to estimate firm-quarter specific nondiscretionary accruals
as a percent of lagged total assets, as in the first model specified in eq. (1),
which we used throughout the analysis. The results of these sensitivity checks
(not tabulated for parsimony) show that the results in Table 7 are robust to alter-
native measures of discretionary accruals.
As a second sensitivity test, we use within-industry-quarter ranks for the
accrual-based and real earnings management variables to avoid any influence of out-
liers. In untabulated results, we find evidence consistent with the findings reported
in Table 7. This alternative specification echoes our main findings of a substitution
between accrual-based earnings management, real earnings management activities,
and downward earnings guidance used to meet or beat an important quarterly bench-
mark such as analysts’ earnings expectations in the Post-SOX period.
5. Conclusion
In this study, we test for changes in the strategies used to meet or beat ana-
lysts’ earnings forecasts following the major accounting scandals of 2001–2002
and the regulatory reforms introduced by the SOX Act of 2002. First, we find
that the overall frequency of just meeting or beating analysts’ earnings expecta-
tion has declined in the Post-SOX period. With regards to the different tools used
to meet or beat analysts’ expectations, we report new evidence that has not been
documented to date. We observe a statistically significant decline in expectations
management in the Post-SOX period compared with the late 1990s. This suggests
that managers have reduced their reliance on downward guidance as a mecha-
nism to just meet or beat analysts’ earnings expectations.
532 JOURNAL OF ACCOUNTING, AUDITING & FINANCE
Second, we provide an explanation for the observed decline in the tendency
to just meet or beat analysts’ expectations. We acknowledge that managers can
simultaneously use a mix of actions to just meet or beat analysts’ earnings
expectations, namely, accrual-based earnings management, expectations manage-
ment, and real earnings management. In fact, one feature underlying our research
design that distinguishes our work from related studies is our use of an empirical
specification that considers simultaneously these three different mechanisms. Our
results suggest that while all three mechanisms are used to just meet or beat ana-
lysts’ earnings expectations, the decline in the frequency of just meeting or beat-
ing between the Post-SOX period and the Late-Pre-Scandal period is related to a
relative decline in both accruals management and expectations management,
whereas real earnings management seems to have overall increased.
Our findings make two main contributions to the existing literature. First,
they contribute to the extant academic literature on the earnings expectations
game by showing that expectations management as well as the propensity of just
meeting or beating analysts’ expectations has decreased significantly in recent
years, namely, in the Post-SOX period. Second and more important, our results
explain the observed decline in the frequency of just meeting or beating analysts’
expectations in the Post-SOX period. Specifically, by being the first study to
simultaneously consider all three mechanisms used to meet or beat analysts’
earnings expectations while controlling for varying economic activities, we show
that the drop in the frequency of just meeting or beating is related to a blend
shift in the three mechanisms used to meet or beat analysts’ earnings expecta-
tions. One implication of our evidence is that in the Post-SOX period investors
and other capital market participants should pay more attention to real earnings
management activities than they did in the Pre-SOX period.
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