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Characteristic Characteristics

While five-factor models of personality are widespread, there is still not universal agreement on this as a structural framework. Part of the reason for the lingering debate is its dependence on factor analysis. In particular, derivation or refutation of the model via other statistical means is a worthwhile project. In this paper we use the methodology of spectral clustering to articulate the structure in the dataset of responses of 20,993 subjects on a 300-item item version of the IPIP NEO personality questionnaire, and we compare our results to those obtained from a factor analytic solution. We found support for five- and six-cluster solutions. The five-cluster solution was similar to a conventional five-factor solution, but the six-cluster and six-factor solutions differed significantly, and only the six-cluster solution was readily interpretable: it gave a model similar to the HEXACO model. We suggest that spectral clustering provides a robust alternative view of personality data.

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Co-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipRelated contextAuthorshipAuthorshipAuthorshipAuthorshipTopic signalTopic signalTopic signalRelated contextRelated contextWCharacteristic Characteristicspreprint / 2011ASean BrocklebankResearcherAScott PaulsResearcherADaniel RockmoreResearcherATimothy C. BatesResearcherTInformation Retrieval3870 worksTApplications3567 worksTphysics.data-an1229 works
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Characteristic Characteristics

preprint / 2011

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