AICLLGJun 17, 2025

Think Clearly: Improving Reasoning via Redundant Token Pruning

arXiv:2507.08806v117 citationsh-index: 17EMNLP
Originality Incremental advance
AI Analysis

This addresses inefficiencies in reasoning for users of large language models, though it is incremental as it builds on existing chain-of-thought methods.

The paper tackles the problem of redundancy in reasoning paths of large language models by pruning redundant tokens based on attention scores, which significantly improves accuracy on reasoning benchmarks like AIME and AMC without training.

Recent large language models have shown promising capabilities in long-form reasoning, following structured chains of thought before arriving at a final answer. However, we observe that these reasoning paths tend to include substantial redundancy; analyzing attention patterns reveals that attention scores are widely scattered, particularly incorrect answers exhibit greater attention sparsity. In this paper, we demonstrate that deliberately removing this redundancy in the reasoning process significantly improves performance through clear thinking, i.e., removing distraction. Specifically, we systematically identify reasoning redundancy by measuring token-level attention scores to a special end-of-thinking token, which is appended to an explicit instruction inserted to conclude each intermediate reasoning step. Furthermore, we propose structure-aware pruning that prioritizes removing tokens in low-contributing reasoning chunks over individual tokens. After evicting redundant tokens, we remove the injected end-of-thinking instruction, then resume the reasoning generation. We demonstrate that our method significantly improves overall accuracy across reasoning-intensive benchmarks without any training involved. In particular, our method shows strong performance on challenging mathematical competition benchmarks such as AIME and AMC, where reasoning redundancy is more prevalent.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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