Suppose the Kalamazoo Brewing Company (KBC) currently sells its microbrews in a seven-state area: Illinois, Indiana, Michigan, Minnesota, Mississippi, Ohio, and Wisconsin. The company’s marketing department has collected data from its distributors in each state. This data consists of the quantity and price (per case) of microbrews sold in each state, as well as the average income (in thousands of dollars) of consumers living in various regions of each state. The data for each state are available via the link below--please note there are multiple tabs at the bottom of the spreadsheet, each refers to one of the seven states selling the Kalamazoo Brewing Company’s microbrews.
Assuming that the underlying demand relation is a linear function of price and income, use your spreadsheet program to obtain least squares estimates of Illinois’s demand for KBC microbrews
Q= __ +__ Price + __ Income
Quantity | Price | Income |
575 | 31.26 | 33.95 |
674 | 30.69 | 35.51 |
616 | 31.54 | 28.78 |
183 | 27.41 | 30.44 |
501 | 29.75 | 31.28 |
578 | 29.48 | 33.77 |
590 | 28.94 | 38.31 |
445 | 28.17 | 34.01 |
603 | 28.58 | 32.53 |
713 | 28.57 | 31.69 |
337 | 30.06 | 32.26 |
230 | 29.36 | 31.57 |
403 | 28.81 | 32.75 |
383 | 32.52 | 29.48 |
568 | 32.02 | 35.91 |
698 | 32.91 | 34.85 |
826 | 28.45 | 34.06 |
789 | 26.85 | 38.92 |
645 | 30.49 | 35.94 |
601 | 31.72 | 38.05 |
467 | 31.23 | 36.48 |
429 | 31.28 | 37.61 |
552 | 28.89 | 38.29 |
553 | 31.13 | 36.9 |
562 | 27.52 | 39.22 |
352 | 30.02 | 34.21 |
611 | 31.38 | 33.97 |
346 | 29.08 | 38.53 |
354 | 28.8 | 34.4 |
401 | 27.64 | 34.01 |
253 | 30.47 | 34.24 |
524 | 30.97 | 38.29 |
211 | 32.85 | 34.66 |
666 | 30.11 | 41.38 |
468 | 29.48 | 32.14 |
585 | 28.41 | 29.16 |
578 | 29.96 | 35.05 |
656 | 30.46 | 37.11 |
571 | 32.86 | 32.94 |
454 | 28.49 | 32.7 |
510 | 30.67 | 33.14 |
672 | 31.92 | 33.73 |
499 | 28.44 | 41.92 |
560 | 27.94 | 35.06 |
848 | 29.74 | 32.71 |
617 | 29.54 | 37.96 |
530 | 31.34 | 37.38 |
649 | 30.08 | 35.55 |
824 | 29.13 | 42.89 |
626 | 31.72 | 37.17 |
Regression summary output as follows.
SUMMARY OUTPUT | ||||
Regression Statistics | ||||
Multiple R | 0.2926 | |||
R Square | 0.0856 | |||
Adjusted R Square | 0.0467 | |||
Standard Error | 151.1541 | |||
Observations | 50 | |||
ANOVA | ||||
df | SS | MS | F | |
Regression | 2 | 100540.9347 | 50270.47 | 2.200256 |
Residual | 47 | 1073835.145 | 22847.56 | |
Total | 49 | 1174376.08 | ||
Coefficients | Standard Error | t Stat | P-value | |
Intercept | -42.6531 | 496.5565698 | -0.0859 | 0.931913 |
Price | 2.6174 | 13.99127624 | 0.187075 | 0.852407 |
Income | 14.3165 | 6.826898346 | 2.097072 | 0.041394 |
Estimated regression equation: Q = - 42.6531 + 2.6174 x Price + 14.3165 x Income
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