Predicting More Behavior More of the Time: On the Behavioral Nature of Different Personality Trait Measures

Read the full article See related articles

Discuss this preprint

Start a discussion What are Sciety discussions?

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Most research focuses on self-reported global trait ratings to approximate behavioral individual differences. However, several alternatives exist. Average self-reported states from experience sampling have been suggested to be closer to behavior, but little evidence supports this to date. Further, other-report should rely more strongly on observable behavior. Here, we predict behavior from different personality trait measures, highlighting type of aggregation (global vs. average state measures) and perspective (self- vs. other-report). We provide initial evidence with a multi-methodological study (N = 88) including six trait measures: global self-report, global informant-report, time-based self-reported states (fortnightly diaries), time-based peer-reported states, event-based self-reported states (after social interactions), and event-based peer-reported states. Measures were compared in the prediction of actual behavior in the laboratory one year later. We focused on four behaviors (warmth, expressiveness, self-confidence, nervousness) and corresponding global/state dimensions. Self-reported states were rarely incrementally predictive above global self-report and thus not as close to behavior as commonly believed. Generally, other-report was more consistently linked to behavior than self-report. Notably, other-reported states were substantially predictive beyond global informant-report and self-reported states, representing an underused method closer to behavior. We outline key future directions to go beyond self-report in behavioral personality science.

Article activity feed