The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.

INTRODUCTION: Human personality is described preferentially in terms of factors (dimensions) found using factor analysis. An alternative and highly related method is network analysis, which may have several advantages over factor analytic methods. AIM: To directly compare the ability of network comm...

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Main Authors: Rutger Goekoop, Jaap G Goekoop, H Steven Scholte
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3527484?pdf=render
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spelling doaj-0daaa4f50870473bbb879c44e3ecd5c32020-11-24T21:12:24ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-01712e5155810.1371/journal.pone.0051558The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.Rutger GoekoopJaap G GoekoopH Steven ScholteINTRODUCTION: Human personality is described preferentially in terms of factors (dimensions) found using factor analysis. An alternative and highly related method is network analysis, which may have several advantages over factor analytic methods. AIM: To directly compare the ability of network community detection (NCD) and principal component factor analysis (PCA) to examine modularity in multidimensional datasets such as the neuroticism-extraversion-openness personality inventory revised (NEO-PI-R). METHODS: 434 healthy subjects were tested on the NEO-PI-R. PCA was performed to extract factor structures (FS) of the current dataset using both item scores and facet scores. Correlational network graphs were constructed from univariate correlation matrices of interactions between both items and facets. These networks were pruned in a link-by-link fashion while calculating the network community structure (NCS) of each resulting network using the Wakita Tsurumi clustering algorithm. NCSs were matched against FS and networks of best matches were kept for further analysis. RESULTS: At facet level, NCS showed a best match (96.2%) with a 'confirmatory' 5-FS. At item level, NCS showed a best match (80%) with the standard 5-FS and involved a total of 6 network clusters. Lesser matches were found with 'confirmatory' 5-FS and 'exploratory' 6-FS of the current dataset. Network analysis did not identify facets as a separate level of organization in between items and clusters. A small-world network structure was found in both item- and facet level networks. CONCLUSION: We present the first optimized network graph of personality traits according to the NEO-PI-R: a 'Personality Web'. Such a web may represent the possible routes that subjects can take during personality development. NCD outperforms PCA by producing plausible modularity at item level in non-standard datasets, and can identify the key roles of individual items and clusters in the network.http://europepmc.org/articles/PMC3527484?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Rutger Goekoop
Jaap G Goekoop
H Steven Scholte
spellingShingle Rutger Goekoop
Jaap G Goekoop
H Steven Scholte
The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.
PLoS ONE
author_facet Rutger Goekoop
Jaap G Goekoop
H Steven Scholte
author_sort Rutger Goekoop
title The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.
title_short The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.
title_full The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.
title_fullStr The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.
title_full_unstemmed The network structure of human personality according to the NEO-PI-R: matching network community structure to factor structure.
title_sort network structure of human personality according to the neo-pi-r: matching network community structure to factor structure.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description INTRODUCTION: Human personality is described preferentially in terms of factors (dimensions) found using factor analysis. An alternative and highly related method is network analysis, which may have several advantages over factor analytic methods. AIM: To directly compare the ability of network community detection (NCD) and principal component factor analysis (PCA) to examine modularity in multidimensional datasets such as the neuroticism-extraversion-openness personality inventory revised (NEO-PI-R). METHODS: 434 healthy subjects were tested on the NEO-PI-R. PCA was performed to extract factor structures (FS) of the current dataset using both item scores and facet scores. Correlational network graphs were constructed from univariate correlation matrices of interactions between both items and facets. These networks were pruned in a link-by-link fashion while calculating the network community structure (NCS) of each resulting network using the Wakita Tsurumi clustering algorithm. NCSs were matched against FS and networks of best matches were kept for further analysis. RESULTS: At facet level, NCS showed a best match (96.2%) with a 'confirmatory' 5-FS. At item level, NCS showed a best match (80%) with the standard 5-FS and involved a total of 6 network clusters. Lesser matches were found with 'confirmatory' 5-FS and 'exploratory' 6-FS of the current dataset. Network analysis did not identify facets as a separate level of organization in between items and clusters. A small-world network structure was found in both item- and facet level networks. CONCLUSION: We present the first optimized network graph of personality traits according to the NEO-PI-R: a 'Personality Web'. Such a web may represent the possible routes that subjects can take during personality development. NCD outperforms PCA by producing plausible modularity at item level in non-standard datasets, and can identify the key roles of individual items and clusters in the network.
url http://europepmc.org/articles/PMC3527484?pdf=render
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