Some New Results on Factor Indeterminacy | Psychometrika | Cambridge Core (original) (raw)
Abstract
Some relations between maximum likelihood factor analysis and factor indeterminacy are discussed. Bounds are derived for the minimum average correlation between equivalent sets of correlated factors which depend on the latent roots of the factor intercorrelation matrix Ψ. Empirical examples are presented to illustrate some of the theory and indicate the extent to which it can be expected to be relevant in practice.
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Original Paper
Copyright
Copyright © 1972 The Psychometric Society
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