1Create a correlation table for the variables in our data set. (Use analysis ToolPak function Correlation.)      a. Interpret the results.  What...

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1Create a correlation table for the variables in our data set. (Use analysis ToolPak function Correlation.)     
 a. Interpret the results.  What variables seem to be important in seeing if we pay males and females equally for equal work?    
               
2Below is a regression analysis for salary being predicted/explained by the other variables in our sample  (Mid,     
  age, ees, sr, raise, and deg variables.) (Note: since salary and compa are different ways of      
  expressing an employee’s salary, we do not want to have both used in the same regression.)      
               
 Ho: The regression equation is not significant.         
 Ha: The regression equation is significant.          
 Ho: The regression coefficient for each variable is not significant        
 Ha: The regression coefficient for each variable is significant        
               
 Sal  The analysis used Sal as the y (dependent variable) and       
 SUMMARY OUTPUT mid, age, ees, sr, g, raise, and deg as the dependent        
    variables (entered as a range).        
 Regression Statistics            
 Multiple R0.99215498            
 R Square0.9843715            
 Adjusted R Square0.98176675            
 Standard Error2.59277631            
 Observations50            
               
 ANOVA             
  dfSSMSFSignificance F        
 Regression717783.72540.52377.9148.44043E-36        
 Residual42282.3456.72249          
 Total4918066           
               
  CoefficientsStandard Errort StatP-valueLower 95%Upper 95%Lower 95.0%Upper 95.0%     
 Intercept-4.0093.775-1.0620.294-11.6273.609-11.6273.609     
 Mid1.2200.03040.6740.0001.1591.2801.1591.280     
 Age0.0290.0670.4390.663-0.1050.164-0.1050.164     
 EES-0.0960.047-2.0200.050-0.1910.000-0.1910.000     
 SR-0.0740.084-0.8760.386-0.2440.096-0.2440.096     
 G2.5520.8473.0120.0040.8424.2610.8424.261     
 Raise0.8340.6431.2990.201-0.4622.131-0.4622.131     
 Deg1.0020.7441.3470.185-0.5002.504-0.5002.504     
               
Interpretation: Do you reject or not reject the regression null hypothesis?        
 Do you reject or not reject the null hypothesis for each variable?        
 What is the regression equation, using only significant variables if any exist?       
 What does result tell us about equal pay for equal work for males and females?       
               
               
3Perform a regression analysis using compa as the dependent variable and the same independent      
 variables as used in question 2.  Show the result, and interpret your findings by answering the same questions.     
 Note: be sure to include the appropriate hypothesis statements.        
               
4Based on all of your results to date, is gender a factor in the pay practices of this company?  Why or why not?     
 Which is the best variable to use in analyzing pay practices - salary or compa?  Why?       
               
               
5Why did the single factor tests and analysis (such as t and single factor ANOVA tests on salary equality) not provide a complete answer to our salary equality question?
 What outcomes in your life or work might benefit from a multiple regression examination rather than a simpler one variable test?    
               
               
               

 

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