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Dynamic Chain-of-Thought: Towards Adaptive Deep Reasoning

7 February 2025
Libo Wang
    LRM
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Abstract

To reduce the cost and consumption of computing resources caused by computational redundancy and delayed reward assignment in long CoT, this research proposes the dynamic chain-of-thought (D-CoT) with adaptive reasoning time and steps. The researcher used simulation experiment to simulate the integration of D-CoT through Python 3.13 IDLE combined with a Python simulator based on GPTs. At the same time, the researcher used DeepSeek R1 as a control group to test and compare the performance of the D-CoT simulator in processing MIT OpenCourseWare's linear algebra exam questions. Experimental results show that D-CoT is better than DeepSeek R1 based on long CoT in three indicators: reasoning time, CoT length (reasoning steps) and token count, which achieves a significant reduction in computing resource consumption. In addition, this research has potential value in deep reasoning optimization that is used as a reference for future dynamic deep reasoning frameworks.

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@article{wang2025_2502.10428,
  title={ Dynamic Chain-of-Thought: Towards Adaptive Deep Reasoning },
  author={ Libo Wang },
  journal={arXiv preprint arXiv:2502.10428},
  year={ 2025 }
}
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