AI RESEARCH

Tight Sample Complexity Bounds for Best-Arm Identification Under Bounded Systematic Bias

arXiv CS.AI

ArXi:2604.14345v1 Announce Type: cross As search depth increases in autonomous reasoning and embodied planning, the candidate action space expands exponentially, heavily taxing computational budgets. While heuristic pruning is a common countermeasure, it operates without formal safety guarantees when surrogate models (like LLMs) exhibit systematic evaluation biases. This paper frames the node expansion process as a localized Best-Arm Identification (BAI) problem over dynamic frontiers, subject to a bounded systematic bias $L.