A shows the linear correlation between each pair of variables under consideration in a multiple regression model.
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Textbook Solutions for Statistics: Informed Decisions Using Data
Question
Head Circumference A pediatrician wants to determine the relation that may exist between a childs head circumference (in centimeters), height (in inches), and weight (in ounces). She randomly selects 14 three-year-old children from her practice and obtains the following data: Height Weight Head Circumference 30 339 47 26.25 267 42 25 289 43 27 332 44.5 27.5 272 44 24.5 214 40.5 27.75 311 44 25 259 41.5 28 298 46 27.25 288 44 26 277 44 27.25 292 44.5 27 302 42.5 28.25 336 44.5 Source: Denise Slucki, student at Joliet Junior College (a) Construct a correlation matrix. Is there any reason to be concerned with multicollinearity? (b) Find the least-squares regression equation yn = b0 + b1x1 + b2 x2, where x1 is height, x2 is weight, and y is the response variable, head circumference. (c) Test H0: b1 = b2 = 0 versus H1: at least one of the bi 0 at the a = 0.05 level of significance. (d) Test the hypotheses H0: b1 = 0 versus H1: b1 0 and H0: b2 = 0 versus H1: b2 0 at the a = 0.05 level of significance. (e) Compute the regression line after removing any explanatory variable that is not significant from the regression model. (f) Draw residual plots, a boxplot of the residuals, and a normal probability plot of the residuals to assess the adequacy of the model found in part (e). (g) Interpret the regression coefficients for the least-squares regression equation found in part (e). (h) Determine and interpret R2 and the adjusted R2 . (i) Construct 95% confidence and prediction intervals for the head circumference of a child whose height is 27.5 inches and whose weight is 285 ounces. Interpret the results. 31
Solution
The first step in solving 14.3 problem number 30 trying to solve the problem we have to refer to the textbook question: Head Circumference A pediatrician wants to determine the relation that may exist between a childs head circumference (in centimeters), height (in inches), and weight (in ounces). She randomly selects 14 three-year-old children from her practice and obtains the following data: Height Weight Head Circumference 30 339 47 26.25 267 42 25 289 43 27 332 44.5 27.5 272 44 24.5 214 40.5 27.75 311 44 25 259 41.5 28 298 46 27.25 288 44 26 277 44 27.25 292 44.5 27 302 42.5 28.25 336 44.5 Source: Denise Slucki, student at Joliet Junior College (a) Construct a correlation matrix. Is there any reason to be concerned with multicollinearity? (b) Find the least-squares regression equation yn = b0 + b1x1 + b2 x2, where x1 is height, x2 is weight, and y is the response variable, head circumference. (c) Test H0: b1 = b2 = 0 versus H1: at least one of the bi 0 at the a = 0.05 level of significance. (d) Test the hypotheses H0: b1 = 0 versus H1: b1 0 and H0: b2 = 0 versus H1: b2 0 at the a = 0.05 level of significance. (e) Compute the regression line after removing any explanatory variable that is not significant from the regression model. (f) Draw residual plots, a boxplot of the residuals, and a normal probability plot of the residuals to assess the adequacy of the model found in part (e). (g) Interpret the regression coefficients for the least-squares regression equation found in part (e). (h) Determine and interpret R2 and the adjusted R2 . (i) Construct 95% confidence and prediction intervals for the head circumference of a child whose height is 27.5 inches and whose weight is 285 ounces. Interpret the results. 31
From the textbook chapter Multiple Regression you will find a few key concepts needed to solve this.
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