MetaTOC stay on top of your field, easily

Personality Constructs Predictions Beyond FFM/Big5: A Digital Phenotyping‐Based Exploration

, ,

Journal of Personality

Published online on

Abstract

["Journal of Personality, Volume 94, Issue 3, Page 380-393, June 2026. ", "\nABSTRACT\n\nObjective\nThe application of digital phenotyping in personality research leverages smartphone‐generated data to quantify individual differences in personality constructs. It can be conceptualized as an extension of Experience Sampling Methods (ESMs), as it allows for the continuous, in situ collection of behavioral and contextual data. This study expands beyond the FFM/Big5 model to include 59 traits/types from 16 personality constructs, including temperament and personal value theories.\n\n\nMethod\nDigital footprints were collected from 104 participants' smartphones over 7–10 days. Both hypothesis‐testing (deductive) and machine learning (inductive) methods were applied to analyze the data.\n\n\nResults\nFour personality constructs of 16 (25%) were successfully predicted (r 0.034–0.53): Adult Attachment, FFM/Big5, Distress Tolerance, and Creativity, given an adopted r ≥ 0.34 threshold for successful predictions. Overall, a total of 22 out of 59 individual traits and types of the 16 constructs were successfully predicted (37.29%). Gradient Boosted Trees emerged as the most effective machine learning predictive model (compared with Decision Tree, Random Forest, and Support Vector Machine), particularly when analyzing communication‐related information features.\n\n\nConclusions\nThis study demonstrates the capacity of Digital Phenotyping of smartphone data to broaden the possibilities of remote personality psychology research and highlights its potential applicability in People Analytics research and additional cross‐disciplinaryscholarly fields.\n\n"]