Many-Shot CoT-ICL: Making In-Context Learning Truly Learn 文章

ArXiv CS.CL2026-06-02NEWSen作者: Tsz Ting Chung, Lemao Liu, Mo Yu, Dit-Yan Yeung

摘要

arXiv:2605.13511v3 Announce Type: replace Abstract: While many-shot ICL achieves remarkable performance, prior studies of its scaling behavior have mainly focused on non-reasoning tasks. In this work, we study many-shot ICL on reasoning tasks, with a particular focus on many-shot chain-of-thought in-context learning (CoT-ICL). Analyzing across non-reasoning and reasoning tasks and across non-reasoning and reasoning-oriented LLMs, we identify several distinctive properties of many-shot CoT-ICL. We further interpret these findings by viewing many-shot CoT-ICL as in-context test-time learning rather than scaled pattern matching, and suggest two principles: (i) demonstrations should be easy for the target model to understand, and (ii) they should be ordered to support a smooth conceptual progression. Guided by the principle, we propose Curvilinear Demonstration Selection (CDS), a simple ordering method that yields up to a 5.42 percentage-point gain on a math task with 64 demonstrations.

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Many-Shot CoT-ICL: Making In-Context Learning Truly Learn
2026-05-29PRODUCT_LAUNCH影响: MEDIUM

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