Model Summary Adjusted R Std. Error of the Model R Square Square Estimate .429" .184 .173 14.57213 a. Predictors: (Constant), Attractiveness (9%), Number of Years as a Model, Age (Years) ANOVA Model Sum of Squares df Mean Square Sig. Regression 10871.96 3 3623.988 17.056 .000 Residual 18202.790 127 212.34 Total 59074.754 230 . Dependent Variable: Salary per Day (E) . Predictors: (Constant), Attractiveness (9%). Number of Years as a Model, Age (Years) Coefficients Standard ized Instandardized Coefficie 95.0% Confidence Coefficients nts terval for B Lower Upper Model B Std. Error Bets Sig Bound Bound (Constant) 60.890 16.497 -3.69 .000 -93.396 28.384 Age (Years) 6.234 1.411 942 4.418 .000 3.454 9.015 Number of Years as a 5.561 2.122 548 -2.621 .009 9.743 1.380 Model Attractiveness (9%) -. 196 157 - 083 -1.289 199 - 497 .104 a. Dependent Variable: Salary per Day (E) Model Summary Adjusted R Std. Error of R Square Now conduct another regression analysis. Model R Square the Estimate changing the variables that were highly .0683 .005 .000 16.02435 correlated with one another. . Predictors: (Constant), Attractiveness (%) Were the results the same? Which one is a better predictor? (Hint: R- of the model). ANOVA Develop the regression equation using the Sum of values from the coefficients table in SPSS. Model Squares df Mean Square Sig Regression 272.150 272.150 1.060 .304 Based on your equation, what would be the salary of a model Residual +09 70889 229 256.780 Total 59074.754 230 . Dependent Variable: Salary per Day (f) . Predictors: (Constant), Attractiveness (96) Coefficients Standardized Unstandardized Coefficients Coefficients 95.0% Confidence Interval for B Model B Std. Error Beta sig. Lower Bound Upper Bound (Constant) .859 1.894 -.072 943 24.295 22.578 Attractiveness (%) 161 156 068 1.029 304 .147 468 a. Dependent Variable: Salary per Day (f) IBM SPSS Statistics Processor is ready