Silenced Biases: The Dark Side LLMs Learned to Refuse
- URL: http://arxiv.org/abs/2511.03369v1
- Date: Wed, 05 Nov 2025 11:24:50 GMT
- Title: Silenced Biases: The Dark Side LLMs Learned to Refuse
- Authors: Rom Himelstein, Amit LeVi, Brit Youngmann, Yaniv Nemcovsky, Avi Mendelson,
- Abstract summary: We introduce the concept of silenced biases, which are unfair preferences encoded within models' latent space.<n>We propose the Silenced Bias Benchmark (SBB), which aims to uncover these biases by employing activation steering.
- Score: 5.2630646053506345
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Safety-aligned large language models (LLMs) are becoming increasingly widespread, especially in sensitive applications where fairness is essential and biased outputs can cause significant harm. However, evaluating the fairness of models is a complex challenge, and approaches that do so typically utilize standard question-answer (QA) styled schemes. Such methods often overlook deeper issues by interpreting the model's refusal responses as positive fairness measurements, which creates a false sense of fairness. In this work, we introduce the concept of silenced biases, which are unfair preferences encoded within models' latent space and are effectively concealed by safety-alignment. Previous approaches that considered similar indirect biases often relied on prompt manipulation or handcrafted implicit queries, which present limited scalability and risk contaminating the evaluation process with additional biases. We propose the Silenced Bias Benchmark (SBB), which aims to uncover these biases by employing activation steering to reduce model refusals during QA. SBB supports easy expansion to new demographic groups and subjects, presenting a fairness evaluation framework that encourages the future development of fair models and tools beyond the masking effects of alignment training. We demonstrate our approach over multiple LLMs, where our findings expose an alarming distinction between models' direct responses and their underlying fairness issues.
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