AI RESEARCH
A Regime Theory of Controller Class Selection for LLM Action Decisions
arXiv CS.AI
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ArXi:2605.06339v1 Announce Type: new Deployed language and vision-language models must decide, on each input, whether to answer directly, retrieve evidence, defer to a stronger model, or abstain. Contrary to the common monotonicity intuition, greater per-input expressivity is not uniformly beneficial in finite samples: under identical strict cross-validation, different benchmarks prefer different controller classes. This reflects a finite-sample limitation of instance-level uncertainty signals, which can be exhausted at a distribution-dependent scale.