CLApr 9

Self-Debias: Self-correcting for Debiasing Large Language Models

arXiv:2604.0824357.3
AI Analysis

This addresses bias mitigation in LLMs for fairer AI applications, representing a novel method rather than an incremental improvement.

The paper tackles the problem of social bias propagation in large language models during chain-of-thought reasoning by introducing Self-Debias, a framework that enables self-correction through resource redistribution and dynamic constraints, achieving superior debiasing performance with only 20k annotated samples while preserving general reasoning capabilities.

Although Large Language Models (LLMs) demonstrate remarkable reasoning capabilities, inherent social biases often cascade throughout the Chain-of-Thought (CoT) process, leading to continuous "Bias Propagation". Existing debiasing methods primarily focus on static constraints or external interventions, failing to identify and interrupt this propagation once triggered. To address this limitation, we introduce Self-Debias, a progressive framework designed to instill intrinsic self-correction capabilities. Specifically, we reformulate the debiasing process as a strategic resource redistribution problem, treating the model's output probability mass as a limited resource to be reallocated from biased heuristics to unbiased reasoning paths. Unlike standard preference optimization which applies broad penalties, Self-Debias employs a fine-grained trajectory-level objective subject to dynamic debiasing constraints. This enables the model to selectively revise biased reasoning suffixes while preserving valid contextual prefixes. Furthermore, we integrate an online self-improvement mechanism utilizing consistency filtering to autonomously synthesize supervision signals. With merely 20k annotated samples, Self-Debias activates efficient self-correction, achieving superior debiasing performance while preserving general reasoning capabilities without continuous external oversight.

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