Self-Debias reformulates LLM debiasing as dynamic probability redistribution with trajectory-level constraints and consistency-filtered self-improvement, claiming superior bias reduction from 20k samples while preserving reasoning ability.
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Self-Debias: Self-correcting for Debiasing Large Language Models
Self-Debias reformulates LLM debiasing as dynamic probability redistribution with trajectory-level constraints and consistency-filtered self-improvement, claiming superior bias reduction from 20k samples while preserving reasoning ability.