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LightThinker: Thinking Step-by-Step Compression

24 February 2025
Jintian Zhang
Yuqi Zhu
Mengshu Sun
Yujie Luo
Shuofei Qiao
Lun Du
Da Zheng
H. Chen
N. Zhang
    LRM
    LLMAG
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Abstract

Large language models (LLMs) have shown remarkable performance in complex reasoning tasks, but their efficiency is hindered by the substantial memory and computational costs associated with generating lengthy tokens. In this paper, we propose LightThinker, a novel method that enables LLMs to dynamically compress intermediate thoughts during reasoning. Inspired by human cognitive processes, LightThinker compresses verbose thought steps into compact representations and discards the original reasoning chains, thereby significantly reducing the number of tokens stored in the context window. This is achieved by training the model on when and how to perform compression through data construction, mapping hidden states to condensed gist tokens, and creating specialized attention masks. Additionally, we introduce the Dependency (Dep) metric to quantify the degree of compression by measuring the reliance on historical tokens during generation. Extensive experiments on four datasets and two models show that LightThinker reduces peak memory usage and inference time, while maintaining competitive accuracy. Our work provides a new direction for improving the efficiency of LLMs in complex reasoning tasks without sacrificing performance. Code will be released atthis https URL.

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@article{zhang2025_2502.15589,
  title={ LightThinker: Thinking Step-by-Step Compression },
  author={ Jintian Zhang and Yuqi Zhu and Mengshu Sun and Yujie Luo and Shuofei Qiao and Lun Du and Da Zheng and Huajun Chen and Ningyu Zhang },
  journal={arXiv preprint arXiv:2502.15589},
  year={ 2025 }
}
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