LGMLJul 6, 2024

Idiographic Personality Gaussian Process for Psychological Assessment

arXiv:2407.04970v1h-index: 4
Originality Incremental advance
AI Analysis

This addresses the problem of personalized psychological assessment for clinicians and researchers, offering an incremental hybrid model.

The authors tackled the debate on whether personality traits are shared across the population or vary individually by developing the idiographic personality Gaussian process (IPGP) framework, which improves prediction of responses and estimation of individualized factor structures compared to benchmarks.

We develop a novel measurement framework based on a Gaussian process coregionalization model to address a long-lasting debate in psychometrics: whether psychological features like personality share a common structure across the population, vary uniquely for individuals, or some combination. We propose the idiographic personality Gaussian process (IPGP) framework, an intermediate model that accommodates both shared trait structure across a population and "idiographic" deviations for individuals. IPGP leverages the Gaussian process coregionalization model to handle the grouped nature of battery responses, but adjusted to non-Gaussian ordinal data. We further exploit stochastic variational inference for efficient latent factor estimation required for idiographic modeling at scale. Using synthetic and real data, we show that IPGP improves both prediction of actual responses and estimation of individualized factor structures relative to existing benchmarks. In a third study, we show that IPGP also identifies unique clusters of personality taxonomies in real-world data, displaying great potential in advancing individualized approaches to psychological diagnosis and treatment.

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