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BUDGETING

Student’s Name:

Academic Affiliation:

Date:

Running Head: BUDGETING 1

BUDGETING 13

Budgeting

Organizations commence their operations with hope for profits but without a well laid down budget, they find it impossible to make a successful plan. Budgeting identifies currently available capital, provides an estimate of expenses and anticipate incoming revenue. Businesses refer to budgets for performance measurements against expenses and ensure that resources are available for initiatives that support business growth and development. The preparation of budgets also allows business owners to concentrate on cash flow. This will enable them to reduce costs thereby improving profits and increasing returns on investment (Zor , Linder & Endenich 2019). The information provided below will show the importance of budgeting for Shiraz, Inc.

According to the data set provided by Sara, the company’s accountant the organization will best use advertising expenses to form their speculative budgets as explained by the regression analysis. Regression analysis is used to estimate the relationship between two or more variables (Lawrence 2019). In our case, the variables are sales in units, advertising expenses and the number of dealers. The independent variables are the advertising expenses and the number of dealers. The dependent variable is the number of sales. Through the regression analysis, the user will understand what happens when one independent variable varies. This analysis will help the management to best choose a variable to make decisions (Abadie et.al 2020).

SUMMARY OUTPUT

 

SUMMARY OUTPUT

 

Number Of Dealers

Advertising Expense

Regression Statistics

 

Regression Statistics

 

Multiple R

0.591677

Multiple R

0.897801

R Square

0.350082

R Square

0.806047

Adjusted R Square

0.28509

Adjusted R Square

0.786651

Standard Error

25816.07

Standard Error

14102.93

Observations

12

Observations

12

The following table shows a summary output of the analysis. Multiple R is the correlation coefficient that measures the strength of a linear relationship between two variables. The value ranges between -1 and 1. The absolute value indicates the relationship strength. The larger the absolute value, the stronger the relationship. Form the data set, it is evident that the advertising expense has a higher correlation value that will enable the organization to choose the variable in proposing budgets. R Square is the coefficient determination. It shows the goodness of fit as it illustrates the number of points that fall on the regression line (Lely et.al 2019). From the table above, the ‘advertising expense’ has a higher coefficient determination than ‘the number of dealers.

 

Coefficients

Standard Error

t Stat

P-value

Lower 95%

Upper 95%

Lower 95.0%

Upper 95.0%

Intercept

128319

59931.13

2.141109

0.057927

-5215.82

261853.9

-5215.82

261853.9

Number of Dealers

457.8854

197.2882

2.320896

0.042708

18.2998

897.471

18.2998

897.471

Regression Equation

y=457.89(x)+128319

 

Coefficients

Standard Error

t Stat

P-value

Lower 95%

Upper 95%

Lower 95.0%

Upper 95.0%

Intercept

114473.3

23905.78

4.788518

0.000736

61207.87

167738.7

61207.87

167738.7

Advertising Expense

6.65615

1.032504

6.446613

7.38E-05

4.355589

8.956712

4.355589

8.956712

Regression Equation

y=6.66(x)+114473

The tables above will illustrate the coefficients useful in making the equations. From the first data set, the coefficient intercept is 128,319 and the number of dealers is approximately 458. Using the equation , where c is the intercept, while x is the independent coefficient and y is the dependent coefficient. The equation for the number of dealers is . The same case applies to the advertising expense.

From the dataset provided above, the organization will use the equation for “advertising expense’ which is The table will enable the organization to develop the capital budget estimates for the month of January to May 20x2. Thereby the sales in units are as follows:

Regression Equation

y=6.66(x)+114473

January

February

March

April

May

Advertising Expenditures

$ 28,000

$ 25,000

$ 27,000

$ 26,500

$ 25,800

Sales (Units)

300953

280973

294293

290963

286301

SECTION ONE: DATA FOR BUDGETS

 

 

 

 

 

Sales Data:

January

February

March

April

May

Sales Units

300,953

280,973

294,293

290,963

286,301

Selling price per unit

$ 12.00

$ 12.00

$ 12.60

$ 12.60

$ 12.60

Percentage of sales collected in the month of sales

225,715

210,730

220,720

218,222

214,726

Percentage of sales collected in the following month

75,238

70,243

73,573

72,741

71,575

Variable Expenses:

 

 

 

 

 

Pounds of material needed per unit of Alpha

1,504,765

1,404,865

1,471,465

1,454,815

1,431,505

Price of material per pound

$ 0.80

$ 0.90

$ 1.00

$ 1.10

$ 1.20

Direct labor hours needed per unit of Alpha

150,477

140,487

147,147

145,482

143,151

Direct labor rate per hour

$ 10

$ 10

$ 10

$ 10

$ 10

Variable manufacturing overhead per unit of Alpha

300,953

280,973

294,293

290,963

286,301

Variable operating expenses per unit of Alpha

$ 150,477

$ 140,487

$ 147,147

$ 145,482

$ 143,151

Fixed Expenses:

 

 

 

 

 

Fixed manufacturing overhead

$ 25,000

$ 25,000

$ 25,000

$ 25,000

$ 25,000

Depreciation portion of fixed overhead

$ 3,000

$ 3,000

$ 3,000

$ 3,000

$ 3,000

Fixed operating expenses

$ 12,000

$ 12,000

$ 12,000

$ 12,000

$ 12,000

Depreciation portion of fixed operating expenses

1,500

1,500

1,500

1,500

1,500

Inventory Policy:

 

 

 

 

 

Desired ending inventory of Alpha (% of next month sales)

56,195

58,859

58,193

57,260

-

Desired ending inventory of DM (% of next month's production needs)

70,243.25

73,573.25

72,740.75

71,575.25

-

 

 

 

 

 

 

Other Information:

 

 

 

 

 

Capital Expenditures

$ 400,000

$ 200,000

 

 

 

Loan Repayments & Interest Expense

$ 17,411

$ 27,141

$ 27,141

$ 27,141

$ 27,141

Income tax rate

30%

30%

30%

30%

30%

Minimum cash retained at the end of month

$ 20,000

$ 20,000

$ 20,000

$ 20,000

$ 20,000

December 20X1 Sales dollars

$ 4,350,000

 

 

 

 

Cash balance as of January 1, 20X2

$ 21,000

 

 

 

 

SECTION TWO: BUDGETS

 

 

 

 

 

Sales Budget

January

February

March

April

May

Sales in Units

300,953

280,973

294,293

290,963

286,301

Unit Selling Price

$ 12.00

$ 12.00

$ 12.60

$ 12.60

$ 12.60

Sales in Dollars

$ 3,611,436

$ 3,371,676

$ 3,708,092

$ 3,666,134

$ 3,607,393

 

 

 

 

 

 

Production Budget

January

February

March

April

May

Sales Units

300,953

280,973

294,293

290,963

286,301

Add: Desired Ending Inventory

56,195

58,859

58,193

57,260

-

Total Required Units

357,148

339,832

352,486

348,223

286,301

Less: Beginning Inventory

75,238

70,243

73,573

72,741

71,575

Required Production Units

281,909

269,588

278,912

275,482

214,726

 

 

 

 

 

 

Direct Materials Budget (Purchases Budget)

January

February

March

April

May

Units to be Produced

281,909

269,588

278,912

275,482

214,726

Direct Material Qty Required Per Unit of Alpha (pounds)

1,504,765

1,404,865

1,471,465

1,454,815

1,431,505

Total Direct Materials Needed for Production (pounds)

1,409,546.75

1,347,941.75

1,394,561.75

1,377,412.25

1,073,628.75

Add: Desired Ending Inventory Direct Materials

280,973

294,293

290,963

286,301

-

Total Direct Materials Needed

1,690,520

1,642,235

1,685,525

1,663,713

1,073,629

Less: Beginning Inventory of Direct Materials

376,191

351,216

367,866

363,704

357,876

Direct Material Purchases (pounds)

1,314,329

1,291,019

1,317,659

1,300,010

715,753

Cost Per Pound

$ 0.80

$ 0.90

$ 1.00

$ 1.10

$ 1.20

Total Cost of DM Purchases

$ 1,051,463

$ 1,161,917

$ 1,317,659

$ 1,430,010

$ 858,903

 

 

 

 

 

 

Cost of Production Budget (Usage Budget)

January

February

March

April

May

Units to be Produced

281,909

269,588

278,912

275,482

214,726

Direct Material Costs

$ 1,051,463

$ 1,161,917

$ 1,317,659

$ 1,430,010

$ 858,903

Direct Labor Cost

$ 1,504,765

$ 1,404,865

$ 1,471,465

$ 1,454,815

$ 1,431,505

Variable Manufacturing Cost

$ 150,477

$ 140,487

$ 147,147

$ 145,482

$ 143,151

Fixed Manufacturing Cost

$ 25,000

$ 25,000

$ 25,000

$ 25,000

$ 25,000

Total Production Costs

$ 2,731,704

$ 2,732,268

$ 2,961,270

$ 3,055,307

$ 2,458,559

Cost of Production Per Unit

$ 9.69

$ 10.13

$ 10.62

$ 11.09

$ 11.45

 

 

 

 

 

 

Operating Expense Budget

January

February

March

April

May

Variable

$ 421,334

$ 393,362

$ 412,010

$ 407,348

$ 400,821

Fixed

$ 12,000

$ 12,000

$ 12,000

$ 12,000

$ 12,000

Total Operating Expenses

$ 433,334

$ 405,362

$ 424,010

$ 419,348

$ 412,821

 

 

 

 

 

 

Budgeted Income Statement

January January

February

March March

April

May

Sales ($)

$ 3,611,436

$ 3,371,676

$ 3,708,092

$ 3,666,134

$ 3,607,393

Cost of Goods Sold

$ 2,731,704

$ 2,732,268

$ 2,961,270

$ 3,055,307

$ 2,458,559

Gross Profit

$ 879,732

$ 639,408

$ 746,822

$ 610,827

$ 1,148,834

Operating Expenses

$ 433,334

$ 405,362

$ 424,010

$ 419,348

$ 412,821

Income from Operations

$ 446,398

$ 234,046

$ 322,812

$ 191,479

$ 736,013

Interest Expense

$ 17,411

$ 27,141

$ 27,141

$ 27,141

$ 27,141

Gross Income

$ 428,987

$ 206,904

$ 295,670

$ 164,337

$ 708,872

Income Taxes

$ 128,696

$ 62,071

$ 88,701

$ 49,301

$ 212,661

Net Income

$ 300,291

$ 144,833

$ 206,969

$ 115,036

$ 496,210

 

 

 

 

 

 

Cash Budget

January

February

March

April

May

Beginning Cash Balance

$ 21,000

$ 20,000

$ 20,000

$ 20,000

$ 20,000

Add: Receipts

 

 

 

 

 

Current Month Sales

$ 3,611,436

$ 3,371,676

$ 3,708,092

$ 3,666,134

$ 3,607,393

Total Receipts

$ 3,611,436

$ 3,371,676

$ 3,708,092

$ 3,666,134

$ 3,607,393

Total Cash Available

3,632,436

3,391,676

3,728,092

3,686,134

3,627,393

Less: Disbursements

 

 

 

 

 

Direct Materials Purchases

$ 1,051,463

$ 1,161,917

$ 1,317,659

$ 1,430,010

$ 858,903

Direct Labor

$ 1,504,765

$ 1,404,865

$ 1,471,465

$ 1,454,815

$ 1,431,505

Fixed Manufacturing Overhead

$ 25,000

$ 25,000

$ 25,000

$ 25,000

$ 25,000

Variable Manufacturing Overhead

$ 150,477

$ 140,487

$ 147,147

$ 145,482

$ 143,151

Fixed Operating Expenses

$ 12,000

$ 12,000

$ 12,000

$ 12,000

$ 12,000

Variable Operating Expenses

$ 421,334

$ 393,362

$ 412,010

$ 407,348

$ 400,821

Income Taxes

$ 128,696

$ 62,071

$ 88,701

$ 49,301

$ 212,661

Capital Expenditures

$ 400,000

$ 200,000

$ -

$ -

$ -

Loan Repayment & Interest Expense

$ 17,411

$ 27,141

$ 27,141

$ 27,141

$ 27,141

Total Disbursements

$ 3,711,145

$ 3,426,843

$ 3,501,123

$ 3,551,098

$ 3,111,183

Excess (deficiency) of available cash over disbursements

$ -78,709

$ -35,167

$ 226,969

$ 135,036

$ 516,210

Financing/Borrowing

98,709

55,167

$ -206,969

$ -115,036

$ -496,210

Ending Cash Balance

$ 20,000

$ 20,000

$ 20,000

$ 20,000

$ 20,000

Notes Payable

0

0

0

0

0

If the organization makes increases the direct labor by 15% and the direct labor by 5 %, the organization will experience a decrease in net income as shown below. It would be in the interest of the organization to maintain the cost and look for other cost-cutting methods that enable them to have more income (Zhao et.al 2019).

January

February

March

April

May

Net Income Before

$ 300,291

$ 144,833

$ 206,969

$ 115,036

$ 496,210

Net Income after

$ 247,624

$ 95,663

$ 155,468

$ 64,118

$ 446,107

% change

82%

83%

75%

56%

89%

References

Lawrence, K. D. (2019). Robust regression: analysis and applications. Routledge.

Abadie, A., Athey, S., Imbens, G. W., & Wooldridge, J. M. (2020). Sampling‐Based versus Design‐Based Uncertainty in Regression Analysis. Econometrica88(1), 265-296.

Lely, J. C., Smid, G. E., Jongedijk, R. A., W. Knipscheer, J., & Kleber, R. J. (2019). The effectiveness of narrative exposure therapy: a review, meta-analysis and meta-regression analysis. European journal of psychotraumatology10(1), 1550344.

Zor, U., Linder, S., & Endenich, C. (2019). CEO characteristics and budgeting practices in emerging market SMEs. Journal of Small Business Management57(2), 658-678.

Zhao, K., Hua, J., Yan, L., Zhang, Q., Xu, H., & Yang, C. (2019, July). A Unified Framework for Marketing Budget Allocation. In Proceedings of the 25th ACM SIGKDD International Conference on Knowledge Discovery & Data Mining (pp. 1820-1830).