AI RESEARCH

Adaptive Generate-Rank-Verify: Inference-Time Search with Costly Verification

arXiv CS.LG

ArXi:2605.17609v1 Announce Type: new Many inference-time language-model pipelines combine a cheap reward signal with an expensive verifier, such as exact answer checking in mathematical reasoning or hidden-test execution in code generation. We formalize this setting using a learning-theoretic lens as generative active search: a cost-sensitive first-positive search problem in which a policy adaptively samples candidates from an unknown distribution, observes cheap scores, and pays for verifier labels until it finds a positive example.