Question

Multiple R=0.81112189 R Square=0.65791872 Adj. R Square=0.61515856 Standard Error=11.6506589 Observations=10 Regression: df=1 ss=2088.497175 ms=2088.497 F=15.3863 Residual:...

Multiple R=0.81112189

R Square=0.65791872

Adj. R Square=0.61515856

Standard Error=11.6506589

Observations=10

Regression: df=1 ss=2088.497175 ms=2088.497 F=15.3863

Residual: df=8 ss=1085.902825 ms=135.7379

Total: df=9 ss=3174.4

Intercept: Coefficients=-70.39 Std. Error=30.00 P-value=0.047

X: Coefficients=17.18 Std. Error=4.38 t-stat=3.92 p value=0.004

Question: For the test of hypothesis regarding the intercept of the model, compute and report the calculated value of the test-statistic.

Question: Predict value of Y, when X = 10.

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