[2603.21461] DSPA: Dynamic SAE Steering for Data-Efficient Preference Alignment
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Abstract page for arXiv paper 2603.21461: DSPA: Dynamic SAE Steering for Data-Efficient Preference Alignment
Computer Science > Machine Learning arXiv:2603.21461 (cs) [Submitted on 23 Mar 2026] Title:DSPA: Dynamic SAE Steering for Data-Efficient Preference Alignment Authors:James Wedgwood, Aashiq Muhamed, Mona T. Diab, Virginia Smith View a PDF of the paper titled DSPA: Dynamic SAE Steering for Data-Efficient Preference Alignment, by James Wedgwood and 3 other authors View PDF HTML (experimental) Abstract:Preference alignment is usually achieved by weight-updating training on preference data, which adds substantial alignment-stage compute and provides limited mechanistic visibility. We propose Dynamic SAE Steering for Preference Alignment (DSPA), an inference-time method that makes sparse autoencoder (SAE) steering prompt-conditional. From preference triples, DSPA computes a conditional-difference map linking prompt features to generation-control features; during decoding, it modifies only token-active latents, without base-model weight updates. Across Gemma-2-2B/9B and Qwen3-8B, DSPA improves MT-Bench and is competitive on AlpacaEval while preserving multiple-choice accuracy. Under restricted preference data, DSPA remains robust and can rival the two-stage RAHF-SCIT pipeline while requiring up to $4.47\times$ fewer alignment-stage FLOPs. Finally, we audit the SAE features DSPA modifies, finding that preference directions are dominated by discourse and stylistic signals, and provide theory clarifying the conditional-difference map estimate and when top-$k$ ablation is principled....