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Interpreting regression results 2. This is the result of a regression where goals is the dependent variable and minutes played is the explanatory variable. a. Write out the simple linear regression equation that predicts goals based on time played using the output displayed here. If the average soccer player played one additional game (90 minutes), how many additional goals would you predict them to have scored? b. Call: 1m(formula goalstimeplayed, data -data) Residuals: Min 1Q Median 3Q Max 5.0572-1.6294 -0.3651 0.4646 25.0687 Coefficients Estimate Std. Error t value Pr Itl) (Intercept) 0.0519394 0.2468440 0.21 0.833 timeplayed 0.0014635 0.0001458 10.04 <2e-16 Signif. codes: 0 **0.001 *0.01 0.05 0.1 1 Residual standard error: 3.254 on 497 degrees of freedonm Multiple R-squared: 0.1685, F-statistic: 100.7 on 1 and 497 DF, p-value: < 2.2e-16 Adjusted R-squared 0.1669

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So l -te result ofalegrenson vul one goeds is ナ dleperdent votables and minutes plycl is e expanotoy Vana ble 70alsニo.os!939y

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