SPLGJan 18, 2024

Personality Trait Inference Via Mobile Phone Sensors: A Machine Learning Approach

arXiv:2401.10305v22 citations
Originality Incremental advance
AI Analysis

This enables cost-effective, questionnaire-free personality assessment at scale, with practical implications for organizations using mobile sensor data.

This study tackled the problem of predicting personality traits from mobile phone sensor data, achieving an F1 score of 0.78 on a two-class problem using accelerometer records and movement patterns.

This study provides evidence that personality can be reliably predicted from activity data collected through mobile phone sensors. Employing a set of well informed indicators calculable from accelerometer records and movement patterns, we were able to predict users' personality up to a 0.78 F1 score on a two class problem. Given the fast growing number of data collected from mobile phones, our novel personality indicators open the door to exciting avenues for future research in social sciences. Our results reveal distinct behavioral patterns that proved to be differentially predictive of big five personality traits. They potentially enable cost effective, questionnaire free investigation of personality related questions at an unprecedented scale. We show how a combination of rich behavioral data obtained with smartphone sensing and the use of machine learning techniques can help to advance personality research and can inform both practitioners and researchers about the different behavioral patterns of personality. These findings have practical implications for organizations harnessing mobile sensor data for personality assessment, guiding the refinement of more precise and efficient prediction models in the future.

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