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arxiv: 2505.21067 · v1 · pith:TFN6GMG3new · submitted 2025-05-27 · 💻 cs.AI

Why Distillation can Outperform Zero-RL: The Role of Flexible Reasoning

classification 💻 cs.AI
keywords reasoningzero-rlmodelbehaviorsdistillationflexibleadvancedbase
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Reinforcement learning (RL) has played an important role in improving the reasoning ability of large language models (LLMs). Some studies apply RL directly to \textit{smaller} base models (known as zero-RL) and also achieve notable progress. However, in this paper, we show that using only 920 examples, a simple distillation method based on the base model can clearly outperform zero-RL, which typically requires much more data and computational cost. By analyzing the token frequency in model outputs, we find that the distilled model shows more flexible reasoning. It uses anthropomorphic tokens and logical connectors much more often than the zero-RL model. Further analysis reveals that distillation enhances the presence of two advanced cognitive behaviors: Multi-Perspective Thinking or Attempting and Metacognitive Awareness. Frequent occurrences of these two advanced cognitive behaviors give rise to flexible reasoning, which is essential for solving complex reasoning problems, while zero-RL fails to significantly boost the frequency of these behaviors.

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  1. Distilling Long-CoT Reasoning through Collaborative Step-wise Multi-Teacher Decoding

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    CoRD uses collaborative multi-teacher step-wise decoding with perplexity-guided beam search to generate higher-quality Long-CoT data that lets smaller models reach near-teacher performance with less supervision.