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Off-the-Shelf LLMs as Process Scorers: Training-Free Alternative to PRMs for Mathematical Reasoning

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Selecting the best response from multiple small-model samples using a stronger scorer is a simple inference-time strategy, but fails when the small model has already committed to incorrect reasoning paths. PRM guided search avoids this by scoring candidate continuations during generation, but requires a reward model trained with step-level labels. We propose Chunk-Level Guided Generation, a training-free alternative that uses an off-the-shelf large language model as a process scorer. At each step, a small model samples k fixed-length candidate chunks, while the larger model scores the candidates using likelihoods without generating any text. The selected chunk is committed before the next step, steering generation before errors can propagate. We instantiate this framework with two selection rules: Likelihood-Guided Selection (LGS), which selects the chunk with the highest length-normalized large-model log-probability, and Contrastive-Guided Selection (CGS), which subtracts the small model's log-probability to favor chunks where the large model's preference diverges from the small model's. We show that scoring variable-length reasoning steps with large-model likelihoods is unreliable due to a systematic length bias that persists even after length normalization, and that fixed-length chunks avoid this confound. On GSM8K, MATH, Minerva Math, AMC23, and AIME24 with Qwen2.5-1.5B guided by Qwen2.5-32B and Llama-3.2-1B guided by Llama-3.1-70B, CGS outperforms majority voting by up to 28 pp and, under matched guidance budgets, matches or outperforms Qwen2.5-Math-PRM-72B guided search on most benchmarks without reward-model training. With Qwen2.5-7B guided by Qwen2.5-72B, CGS reaches 81.8% on MATH and 63.6% on Minerva Math at k=16, surpassing majority voting by 4--6 pp. Finally, Chunk-Level Guided Generation produces substantially shorter reasoning traces than PRM guided search.

Atoosa Chegini, Soheil Feizi• 2026

Related benchmarks

TaskDatasetResultRank
Mathematical ReasoningAMC23
PASS@1 Accuracy65.8
207
Mathematical ReasoningGSM8K--
204
Mathematical ReasoningAMC'23 (test)
Accuracy50.8
152
Mathematical ReasoningGSM8K v1 (test)
Accuracy92.5
118
Mathematical ReasoningMinerva Math
Accuracy63.6
104
Mathematical ReasoningGSM8K
Accuracy92.5
95
Mathematical ReasoningMinerva Math v1 (test)
Accuracy (avg@1)39
87
Mathematical ReasoningMATH v1 (test)
Accuracy68.8
77
Mathematical ReasoningAIME24 v1 (test)
Accuracy13.3
72
Mathematical ReasoningMATH
Accuracy (%)81.8
12
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