cs.AI updates on arXiv.org 08月21日
Social Debiasing for Fair Multi-modal LLMs
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本文提出一种针对多模态大型语言模型(MLLMs)社会偏见问题的解决方案,包括构建包含多元社会概念的CMSC数据集和采用反刻板印象去偏(CSD)策略,有效降低模型偏见并保持整体性能。

arXiv:2408.06569v2 Announce Type: replace-cross Abstract: Multi-modal Large Language Models (MLLMs) have dramatically advanced the research field and delivered powerful vision-language understanding capabilities. However, these models often inherit deep-rooted social biases from their training data, leading to uncomfortable responses with respect to attributes such as race and gender. This paper addresses the issue of social biases in MLLMs by i) introducing a comprehensive counterfactual dataset with multiple social concepts (CMSC), which complements existing datasets by providing 18 diverse and balanced social concepts; and ii) proposing a counter-stereotype debiasing (CSD) strategy that mitigates social biases in MLLMs by leveraging the opposites of prevalent stereotypes. CSD incorporates both a novel bias-aware data sampling method and a loss rescaling method, enabling the model to effectively reduce biases. We conduct extensive experiments with four prevalent MLLM architectures. The results demonstrate the advantage of the CMSC dataset and the edge of CSD strategy in reducing social biases compared to existing competing methods, without compromising the overall performance on general multi-modal reasoning benchmarks.

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MLLMs 社会偏见 去偏策略 数据集 CSD
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