Quant Methods For Business

TotallyNotBald
Question.docx

Next to examine the relationship between shopping expenditures and consumer characteristics – specifically income, age and marital status using the data below. You want to see how each variable is related to expenditures, the ability of each variable to explain variations in spending and the effect of marital status, if any, upon spending.

 

Shopping Expenditure

Income

Age

Married (1=Yes, 0=No)

1

410

55

44

1

2

551

62

36

1

3

677

102

51

1

4

1120

225

49

0

5

325

48

34

0

6

334

32

28

1

7

200

26

24

0

8

400

44

36

1

9

648

98

42

1

10

550

72

50

1

11

350

55

36

0

12

375

63

27

0

13

149

18

19

0

14

475

62

35

1

15

350

55

43

0

16

298

40

29

1

17

235

33

24

0

18

580

99

52

0

19

1600

304

62

1

20

740

115

54

1

21

1180

203

58

1

22

500

88

43

0

23

445

55

32

1

24

278

42

30

0

25

115

26

25

0

26

456

73

34

1

27

189

21

20

0

28

455

38

33

1

29

302

39

25

0

30

255

36

29

1

31

168

41

31

1

32

255

29

23

0

33

315

37

33

1

34

730

116

42

1

35

552

69

44

1

36

488

84

30

0

37

545

77

36

1

38

750

145

34

0

39

545

66

55

1

40

499

70

53

1

41

602

82

46

1

42

488

51

39

1

43

415

49

31

1

44

444

66

38

0

45

322

34

26

1

46

145

22

21

0

47

111

19

22

0

48

810

155

38

0

49

1205

200

43

1

50

559

111

51

0

Using this data:

a. Generate a regression model to examine shopping expenditures. Explore all possible models, first using single independent variables (Xes) and then a multiple regression. Perform all appropriate analyses and hypothesis tests and then report your results in a memo and attach a statistical appendix detailing the hypothesis testing and other procedures that you have used in the analysis.

b. Select the best model and explain what the coefficients mean.

6