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Second-Order Disjoint Factor Analysis

Carlo Cavicchia, Maurizio Vichi

2021Psychometrika18 citationsDOIOpen Access PDF

Abstract

Hierarchical models are often considered to measure latent concepts defining nested sets of manifest variables. Therefore, by supposing a hierarchical relationship among manifest variables, the general latent concept can be represented by a tree structure where each internal node represents a specific order of abstraction for the latent concept measured. In this paper, we propose a new latent factor model called second-order disjoint factor analysis in order to model an unknown hierarchical structure of the manifest variables with two orders. This is a second-order factor analysis, which-respect to the second-order confirmatory factor analysis-is exploratory, nested and estimated simultaneously by maximum likelihood method. Each subset of manifest variables is modeled to be internally consistent and reliable, that is, manifest variables related to a factor measure "consistently" a unique theoretical construct. This feature implies that manifest variables are positively correlated with the related factor and, therefore, the associated factor loadings are constrained to be nonnegative. A cyclic block coordinate descent algorithm is proposed to maximize the likelihood. We present a simulation study that investigates the ability to get reliable factors. Furthermore, the new model is applied to identify the underlying factors of well-being showing the characteristics of the new methodology. A final discussion completes the paper.

Topics & Concepts

Latent variableConfirmatory factor analysisFactor analysisExploratory factor analysisDisjoint setsMathematicsMeasure (data warehouse)Tree (set theory)Latent variable modelFactor (programming language)Latent class modelNested set modelLocal independenceStructural equation modelingComputer scienceStatisticsData miningDiscrete mathematicsRelational databaseMathematical analysisProgramming languageBayesian Modeling and Causal InferenceSensory Analysis and Statistical MethodsComplex Network Analysis Techniques