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only part II is needed

Regardless of your answer to (a), you come up with the following multiple regression model. b. Coefficients: Estimate Std. Er

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I can explain 49.4 % of the total variation in life expectancy by this regression model, by R-squared,

which is better than what average of dependent variable does because R-squared gives explained variation by the usage of this regression model of predicting y values by the x values whereas the average value of x doesnt take account of x values while calculating the varaition.

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only part II is needed Regardless of your answer to (a), you come up with the following multiple regression model. b. Coefficients: Estimate Std. Error t value Pr>lt (Intercept) 72.2285 1.2697 56....
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