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Dynamic Thinking-Token Selection for Efficient Reasoning in Large Reasoning Models

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Large Reasoning Models (LRMs) excel at solving complex problems by explicitly generating a reasoning trace before deriving the final answer. However, these extended generations incur substantial memory footprint and computational overhead, bottlenecking LRMs' efficiency. This work uses attention maps to analyze the influence of reasoning traces and uncover an interesting phenomenon: only some decision-critical tokens in a reasoning trace steer the model toward the final answer, while the remaining tokens contribute negligibly. Building on this observation, we propose Dynamic Thinking-Token Selection (DynTS). This method identifies decision-critical tokens and retains only their associated Key-Value (KV) cache states during inference, evicting the remaining redundant entries to optimize efficiency.

Zhenyuan Guo, Tong Chen, Wenlong Meng, Chen Gong, Xin Yu, Chengkun Wei, Wenzhi Chen• 2026

Related benchmarks

TaskDatasetResultRank
Mathematical ReasoningMATH500 (test)--
381
Mathematical ReasoningAIME 2025 (test)
Pass@1 Rate36.6
47
Mathematical ReasoningGK EN 2023 (test)
Pass@176.4
16
Scientific Question AnsweringGPQA Diamond (test)
Pass@148.1
16
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