AI RESEARCH

Explaining and Breaking the Safety-Helpfulness Ceiling via Preference Dimensional Expansion

arXiv CS.AI

ArXi:2605.11679v1 Announce Type: new In the realm of multi-objective alignment for large language models, balancing disparate human preferences often manifests as a zero-sum conflict. Specifically, the intrinsic tension between competing goals dictates that aggressively optimizing for one metric (e.g., helpfulness) frequently incurs a substantial penalty on another (e.g., harmlessness). While prior work mainly focuses on data selection, parameter merging, or algorithmic balancing during