I have 13 spss files related to two questionnaire (each 124 participants for 39 5-likert scale). One questionnaire is for CSR dimensions (independent variable) and one for Employee loyalty elements (dependent variable). Each employee loyalty element (latent variable) is tested by 3 questions from CSR questionnaire and 3 questions from EL questionnaire. I need to manipulate (and do the proper SPSS tests) to do hypotheses tests for 13 hypotheses and manipulate the data to prove by SPSS tests that 2 hypotheses have weak csr-el relationship and remaining 11 hypotheses are OK as declared. I have given that assignment to one guys I have 13 spss files related to two questionnaire (each 124 participants for 39 5-likert scale). One questionnaire is for CSR dimensions (independent variable) and one for Employee loyalty elements (dependent variable). Each employee loyalty element (latent variable) is tested by 3 questions from CSR questionnaire and 3 questions from EL questionnaire. I need to manipulate (and do the proper SPSS tests) to do hypotheses tests for 13 hypotheses and manipulate the data to prove by SPSS tests that 2 hypotheses have weak csr-el relationship and remaining 11 hypotheses are OK as declared. I have given that assignment to one guys here, but I think he is weak in his analysis and report. His spss tests are: - Internal consistency check (cronback alpha) which is required here - He took the mean scores of each 3 questions from csr and el and used Heteroscedasticity-Consistent Standard Errors (HCSE) estimator (Hayes & Cai, 2007) to test linear regression and depended on beta coofficiant to test relationship (high beta means relationship is strong....low beta means weak relationship)...i'm not convinced with this approach....That is why I need your support to provide data manipulation, and offer all the spss tests needed for a thesis paper to provide good/weak relationship...can you do that?here, but I think he is weak in his analysis and report. His spss tests are: - Internal consistency check (cronback alpha) which is required here - He took the mean scores of each 3 questions from csr and el and used Heteroscedasticity-Consistent Standard Errors (HCSE) estimator (Hayes & Cai, 2007) to test linear regression and depended on beta coofficiant to test relationship (high beta means relationship is strong....low beta means weak relationship)...i'm not convinced with this approach....That is why I need your support to provide data manipulation, and offer all the spss tests needed for a thesis paper to provide good/weak relationship...please what test can I use