Posted: September 13th, 2017
Multiple Regression & Question 2. linear multiple regression analysis
Order Description
Multiple Regression
Complete Smart Alex’s Task #4 on p. 355 to perform a multiple regression analysis using the Supermodel.sav dataset from the Field text. Report your findings in APA
format.
In the assignment be sure to:
1) Describe and test the assumptions of multiple correlation – report both in the summary.
2) Create the null and alternative hypotheses..
3a) Correctly Report (in APA style) and summarize the results for the overall model (R, R-square, it’s F-test, p-value).
3b) Then summarize and explain the results for each significant (where p = .05) predictor variable (of salary), report Beta (standardized regression coefficient), t-
test for b (unstandardized regression coefficient) along with it’s p-value (sig.)
3c) Report the effect sizes – squared semi-partial correlation (sr2) for all variables. Interpret sr2 for all significant predictors.
4) Include the appropriate tables
5) Be sure to attach the spss output with syntax in a separate file.
Question 2. linear multiple regression analysis
Complete Smart Alex’s Task #5 on p. 355 to complete the linear multiple regression analysis using the Child Aggression.sav dataset from the Field text. However, use
only the variables Aggression (DV), and test to see if Sibling Aggression is a mediator of the relationship between Parenting Style and Aggression or whether Sibling
Aggression is a moderator of the relationship.
In the assignment, Include the appropriate tables
Describe and test the assumptions – report both in the summary.
Create the null and alternative hypotheses.
Correctly Report (in APA style) and summarize the results for the overall model
Be sure to attach the spss output with syntax in a separate file.
Needs IBM SPSS Statistics Standard GradPack (current version)to open and access attached data file. Thanks
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