Debiased Multimodal Personality Understanding through Dual Causal Intervention
Yangfu Zhu (Capital Normal University) Zitong Han (Capital Normal University) Nianwen Ning (Henan University) Yuting Wei (University of International Relations) Yuandong Wang (Capital Normal University) Hang Feng (Capital Normal University) Zhenzhou Shao (Capital Normal Universit

TL;DR
This paper introduces a causal inference framework with dual adjustment modules to improve fairness and accuracy in multimodal personality understanding, addressing biases from demographic and latent factors.
Contribution
It proposes a novel Dual Causal Adjustment Network (DCAN) with back-door and front-door modules to mitigate observable and unobservable biases in personality prediction.
Findings
DCAN achieves over 92% accuracy on benchmark datasets.
Fairness metrics improved by up to 20% with DCAN.
Constructed a new Demographic-annotated Multimodal Student Personality dataset.
Abstract
Multimodalpersonalityunderstandingplaysacriticalroleinhuman centered artificial intelligence. Previous work mainly focus on learn-ing rich multimodal representations for video personality under standing. However, they often suffer from potential harm caused by subject bias (e.g., observable age and unobservable mental states), as subjects originate from diverse demographic backgrounds. Learn ing such spurious associations between multimodal features and traits may lead to unfair personality understanding. In this work, weconstruct aStructural Causal Model (SCM)toanalyze theimpact of these biases from a causal perspective, and propose a novel Dual Causal Adjustment Network (DCAN) to mitigate the interference of subject attributes on personality understanding. Specifically, we design a Back-door Adjustment Causal Learning (BACL) module to block spurious correlations from observable…
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