Journal of Data Science logo


Login Register

  1. Home
  2. Issues
  3. Volume 14, Issue 3 (2016)
  4. Fitting Exploratory Factor Analysis Mode ...

Journal of Data Science

Submit your article Information
  • Article info
  • Related articles
  • More
    Article info Related articles

Fitting Exploratory Factor Analysis Models with High Dimensional Psychological Data
Volume 14, Issue 3 (2016), pp. 519–538
W. Holmes Finch   Maria E. Hernández Finch  

Authors

 
Placeholder
https://doi.org/10.6339/JDS.201607_14(3).0008
Pub. online: 4 August 2022      Type: Research Article      Open accessOpen Access

Published
4 August 2022

Abstract

Abstract: Objectives: Exploratory Factor Analysis (EFA) is a very popular statistical technique for identifying potential latent structure underlying a set of observed indicator variables. EFA is used widely in the social sciences, business and finance, machine learning, and the health sciences, among others. Research has found that standard methods of estimating EFA model parameters do not work well when the sample size is relatively small (e.g. less than 50) and/or when the number of observed variables approaches the sample size in value. The purpose of the current study was to investigate and compare some alternative approaches to fitting EFA in the case of small samples and high dimensional data. Results of both a small simulation study, and an application of the methods to an intelligence test revealed that several alternative approaches designed to reduce the dimensionality of the observed variable covariance matrix worked very well in terms of recovering population factor structure with EFA. Implications of these results for practice are discussed..

Related articles PDF XML
Related articles PDF XML

Copyright
No copyright data available.

Keywords
Exploratory Factor Analysis High Dimensional Data

Metrics
since February 2021
842

Article info
views

450

PDF
downloads

Export citation

Copy and paste formatted citation
Placeholder

Download citation in file


Share


RSS

Journal of data science

  • Online ISSN: 1683-8602
  • Print ISSN: 1680-743X

About

  • About journal

For contributors

  • Submit
  • OA Policy
  • Become a Peer-reviewer

Contact us

  • JDS@ruc.edu.cn
  • No. 59 Zhongguancun Street, Haidian District Beijing, 100872, P.R. China
Powered by PubliMill  •  Privacy policy