AI RESEARCH

Learning Where It Matters: Geometric Anchoring for Robust Preference Alignment

arXiv CS.LG

ArXi:2602.04909v3 Announce Type: replace Direct Preference Optimization (DPO) and related methods align large language models from pairwise preferences by regularizing updates against a fixed reference policy. As the policy drifts, a static reference, however, can become increasingly miscalibrated, leading to distributional mismatch and amplifying spurious preference signals under noisy supervision. Conversely, reference-free variants avoid mismatch but often suffer from unconstrained reward drift.