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Not Positive Definite Correlation Matrices in Exploratory Item Factor Analysis: Causes, Consequences and a Proposed Solution

Urbano Lorenzo‐Seva, Pere J. Ferrando

2020Structural Equation Modeling A Multidisciplinary Journal103 citationsDOIOpen Access PDF

Abstract

Least-squares exploratory factor analysis based on tetrachoric/polychoric correlations is a robust, defensible and widely used approach for performing item analysis, especially in the first stages of scale development. A relatively common problem in this scenario, however, is that the inter-item correlation matrix fails to be positive definite. This paper, which is largely intended for practitioners, aims to provide a didactic discussion about the causes, consequences and remedies of this problem. The discussion is more applied than statistical and based on the factor analysis model, and the problem is linked to that of improper solutions. Solutions for preventing the problem from occurring, and the smoothing corrections available at present are described and discussed. A new smoothing algorithm is also proposed.

Topics & Concepts

Polychoric correlationExploratory factor analysisPositive-definite matrixSmoothingScale (ratio)Factor analysisMathematicsEconometricsLeast-squares function approximationMatrix (chemical analysis)Computer scienceCorrelationStatisticsStructural equation modelingEigenvalues and eigenvectorsComposite materialPhysicsQuantum mechanicsEstimatorGeometryMaterials scienceAdvanced Statistical Modeling TechniquesPsychometric Methodologies and TestingSensory Analysis and Statistical Methods
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