Getting Started in Factor Analysis (using Stata 10)
Factor analysis is used mostly for data reduction purposes: – To get a small set of variables (preferably uncorrelated) from a large set of ... Principal-components factoring. Total variance accounted by each factor. The sum of all eigenvalues = total number of variables.
Analysis, Using, Factors, Principal, Getting, Started, Getting started in factor analysis
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