English

Debiased Multimodal Understanding for Human Language Sequences

Artificial Intelligence 2024-12-16 v3

Abstract

Human multimodal language understanding (MLU) is an indispensable component of expression analysis (e.g., sentiment or humor) from heterogeneous modalities, including visual postures, linguistic contents, and acoustic behaviours. Existing works invariably focus on designing sophisticated structures or fusion strategies to achieve impressive improvements. Unfortunately, they all suffer from the subject variation problem due to data distribution discrepancies among subjects. Concretely, MLU models are easily misled by distinct subjects with different expression customs and characteristics in the training data to learn subject-specific spurious correlations, limiting performance and generalizability across new subjects. Motivated by this observation, we introduce a recapitulative causal graph to formulate the MLU procedure and analyze the confounding effect of subjects. Then, we propose SuCI, a simple yet effective causal intervention module to disentangle the impact of subjects acting as unobserved confounders and achieve model training via true causal effects. As a plug-and-play component, SuCI can be widely applied to most methods that seek unbiased predictions. Comprehensive experiments on several MLU benchmarks clearly show the effectiveness of the proposed module.

Keywords

Cite

@article{arxiv.2403.05025,
  title  = {Debiased Multimodal Understanding for Human Language Sequences},
  author = {Zhi Xu and Dingkang Yang and Mingcheng Li and Yuzheng Wang and Zhaoyu Chen and Jiawei Chen and Jinjie Wei and Lihua Zhang},
  journal= {arXiv preprint arXiv:2403.05025},
  year   = {2024}
}

Comments

Accepted by AAAI2025

R2 v1 2026-06-28T15:13:07.768Z