| Multiple Linear Regression - Estimated Regression Equation |
| Cons[t] = + 130.70658748714 + 1.06170962850255Inc[t] -1.38298545741215Price[t] + e[t] |
| Multiple Linear Regression - Ordinary Least Squares | |||||
| Variable | Parameter | S.D. | T-STAT H0: parameter = 0 | 2-tail p-value | 1-tail p-value |
| (Intercept) | 130.70658748714 | 27.094293 | 4.8241 | 0.00027 | 0.000135 |
| Inc | 1.06170962850255 | 0.266674 | 3.9813 | 0.001365 | 0.000683 |
| Price | -1.38298545741215 | 0.083814 | -16.5006 | 0 | 0 |
| Multiple Linear Regression - Regression Statistics | |
| Multiple R | 0.97533669567652 |
| R-squared | 0.951281669933193 |
| Adjusted R-squared | 0.944321908495077 |
| F-TEST (value) | 136.683085820079 |
| F-TEST (DF numerator) | 2 |
| F-TEST (DF denominator) | 14 |
| p-value | 6.51398490703059e-10 |
| Multiple Linear Regression - Residual Statistics | |
| Residual Standard Deviation | 5.56335573538938 |
| Sum Squared Residuals | 433.312978538859 |
| Multiple Linear Regression - Actuals, Interpolation, and Residuals | |||
| Time or Index | Actuals | Interpolation Forecast | Residuals Prediction Error |
| 1 | 99.2 | 93.6923773647087 | 5.50762263529129 |
| 2 | 99 | 96.4234577562831 | 2.57654224371687 |
| 3 | 100 | 98.5790045961792 | 1.42099540382082 |
| 4 | 111.6 | 116.781445075516 | -5.18144507551595 |
| 5 | 122.2 | 122.451685450906 | -0.251685450905763 |
| 6 | 117.6 | 122.909996278299 | -5.3099962782986 |
| 7 | 121.1 | 123.045531883681 | -1.94553188368099 |
| 8 | 136 | 135.42538289425 | 0.574617105750393 |
| 9 | 154.2 | 149.804169317876 | 4.39583068212367 |
| 10 | 153.6 | 152.057362453703 | 1.54263754629677 |
| 11 | 158.5 | 153.905448166484 | 4.59455183351612 |
| 12 | 140.6 | 145.557094958023 | -4.95709495802323 |
| 13 | 136.2 | 145.097520583372 | -8.89752058337242 |
| 14 | 168 | 161.584412169109 | 6.41558783089085 |
| 15 | 154.3 | 156.861421638295 | -2.5614216382951 |
| 16 | 149 | 156.288651026975 | -7.28865102697549 |
| 17 | 165.5 | 156.135038386339 | 9.36496161366076 |









