ArXiv TLDR

Select to Think: Unlocking SLM Potential with Local Sufficiency

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2604.26940

Wenxuan Ye, Yangyang Zhang, Xueli An, Georg Carle, Yunpu Ma

cs.CL

TLDR

Select to Think (S2T) enhances small language models' reasoning by having LLMs select from SLM predictions, then distills this logic for autonomous improvement.

Key contributions

  • Identified "local sufficiency": LLM's preferred token is often in SLM's top-K next-token predictions.
  • Proposed "Select to Think" (S2T) reframing LLM's role to selection among SLM proposals, simplifying supervision.
  • Introduced S2T-LOCAL, which distills the selection logic into the SLM for autonomous re-ranking without LLM dependency.
  • Improved SLM greedy decoding by 24.1% on average, matching 8-path self-consistency with single-trajectory efficiency.

Why it matters

Small language models (SLMs) are efficient but lack reasoning. Existing solutions are costly or limited. This paper introduces S2T-LOCAL, a novel distillation method that significantly boosts SLM reasoning power and efficiency by enabling autonomous re-ranking, bridging the gap to larger models.

Original Abstract

Small language models (SLMs) offer computational efficiency for scalable deployment, yet they often fall short of the reasoning power exhibited by their larger counterparts (LLMs). To mitigate this gap, current approaches invoke an LLM to generate tokens at points of reasoning divergence, but these external calls introduce substantial latency and costs. Alternatively, standard distillation is often hindered by the capacity limitation, as SLMs struggle to accurately mimic the LLM's complex generative distribution. We address this dilemma by identifying local sufficiency: at divergence points, the LLM's preferred token consistently resides within the SLM's top-K next-token predictions, even when failing to emerge as the SLM top-1 choice. We therefore propose SELECT TO THINK (S2T), which reframes the LLM's role from open-ended generation to selection among the SLM's proposals, simplifying the supervision signal to discrete candidate rankings. Leveraging this, we introduce S2T-LOCAL, which distills the selection logic into the SLM, empowering it to perform autonomous re-ranking without inference-time LLM dependency. Empirically, we demonstrate that a 1.5B SLM's top-8 candidates capture the 32B LLM's choice with 95% hit rate. Translating this potential into performance, S2T-LOCAL improves greedy decoding by 24.1% on average across benchmarks, effectively matching the efficacy of 8-path self-consistency while operating with single-trajectory efficiency.

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