Interpreting Social Bias in LVLMs via Information Flow Analysis and Multi-Round Dialogue Evaluation
Journal:
arXiv
Published Date:
May 27, 2025
Abstract
Large Vision Language Models (LVLMs) have achieved remarkable progress in
multimodal tasks, yet they also exhibit notable social biases. These biases
often manifest as unintended associations between neutral concepts and
sensitive human attributes, leading to disparate model behaviors across
demographic groups. While existing studies primarily focus on detecting and
quantifying such biases, they offer limited insight into the underlying
mechanisms within the models. To address this gap, we propose an explanatory
framework that combines information flow analysis with multi-round dialogue
evaluation, aiming to understand the origin of social bias from the perspective
of imbalanced internal information utilization. Specifically, we first identify
high-contribution image tokens involved in the model's reasoning process for
neutral questions via information flow analysis. Then, we design a multi-turn
dialogue mechanism to evaluate the extent to which these key tokens encode
sensitive information. Extensive experiments reveal that LVLMs exhibit
systematic disparities in information usage when processing images of different
demographic groups, suggesting that social bias is deeply rooted in the model's
internal reasoning dynamics. Furthermore, we complement our findings from a
textual modality perspective, showing that the model's semantic representations
already display biased proximity patterns, thereby offering a cross-modal
explanation of bias formation.