
解锁大语言模型推理能力:思维链(CoT)技术深度解析
This article provides a comprehensive analysis of Chain-of-Thought (CoT) prompting techniques that enhance reasoning capabilities in large language models. It covers the evolution from basic CoT to advanced methods like Zero-shot-CoT, Self-consistency, Least-to-Most prompting, and Fine-tune-CoT, while discussing their applications, limitations, and impact on AI development. (本文全面分析了增强大语言模型推理能力的思维链提示技术,涵盖了从基础CoT到零样本思维链、自洽性、最少到最多提示和微调思维链等高级方法的演进,同时讨论了它们的应用、局限性以及对人工智能发展的影响。)
LLMS2026/2/4
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