CHAPTER 5 EXAMPLES: CONFIRMATORY FACTOR …
5.28: EFA with residual variances constrained to be greater than zero 5.29: Bi-factor EFA using ESEM 5.30: Bi-factor EFA with two items loading on only the general factor Following is the set of Bayesian CFA examples included in this chapter: 5.31: Bayesian bi-factor CFA with two items loading on only the
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