CHAPTER 3 EXAMPLES: REGRESSION AND PATH ANALYSIS
CHAPTER 3 EXAMPLES: REGRESSION AND PATH ANALYSIS Regression analysis with univariate or multivariate dependent variables is a standard procedure for modeling relationships among observed variables. Path analysis allows the simultaneous modeling of several ... categorical (ordinal) variables in the model and its estimation. In the
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