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Shifting Perspectives: Steering Vectors for Robust Bias Mitigation in LLMs

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We present a novel approach to bias mitigation in large language models (LLMs) by applying steering vectors to modify model activations in forward passes. We compute 8 steering vectors, each corresponding to a different social bias axis, such as age, gender, or race, on a training subset of the BBQ dataset and compare the effectiveness of these to 3 additional bias mitigation methods across 4 datasets. When optimized on the BBQ dataset, our individually tuned steering vectors achieve average improvements of 12.8% on BBQ, 8.3% on CLEAR-Bias, and 1% on StereoSet, and show improvements over prompting and Self-Debias in all cases, and improvements over fine-tuning in 12 out of 17 evaluations. In addition, steering vectors showed the lowest impact on MMLU scores of the four bias mitigation methods tested. The work presents the first systematic investigation of steering vectors for bias mitigation, and we demonstrate that they are a powerful and computationally efficient strategy for reducing bias in LLMs, with broader implications for enhancing AI safety.

Zara Siddique, Irtaza Khalid, Liam D. Turner, Luis Espinosa-Anke• 2025

Related benchmarks

TaskDatasetResultRank
Bias EvaluationBBQ--
113
General Knowledge EvaluationMMLU
MMLU Accuracy46.8
45
Bias MeasurementStereoSet--
25
Bias MitigationBBQ SingleTurn
Age Bias25.8
12
Bias MitigationFairMT-Bench
Anaphora Elipsis Score32.3
12
Bias MitigationPCT SingleTurn
English PCT SingleTurn Score24.8
12
Bias MitigationF^2-Bench
Accuracy (Age)32.4
12
Bias EvaluationCLEAR Bias
Age Performance80
5
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