cs.AI updates on arXiv.org 10月14日 12:18
LLM中归纳推理综述
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本文对大语言模型(LLMs)中的归纳推理进行了全面综述,包括提高归纳推理的方法、归纳推理的基准测试以及归纳能力的来源分析。

arXiv:2510.10182v1 Announce Type: cross Abstract: Reasoning is an important task for large language models (LLMs). Among all the reasoning paradigms, inductive reasoning is one of the fundamental types, which is characterized by its particular-to-general thinking process and the non-uniqueness of its answers. The inductive mode is crucial for knowledge generalization and aligns better with human cognition, so it is a fundamental mode of learning, hence attracting increasing interest. Despite the importance of inductive reasoning, there is no systematic summary of it. Therefore, this paper presents the first comprehensive survey of inductive reasoning for LLMs. First, methods for improving inductive reasoning are categorized into three main areas: post-training, test-time scaling, and data augmentation. Then, current benchmarks of inductive reasoning are summarized, and a unified sandbox-based evaluation approach with the observation coverage metric is derived. Finally, we offer some analyses regarding the source of inductive ability and how simple model architectures and data help with inductive tasks, providing a solid foundation for future research.

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大语言模型 归纳推理 LLMs 推理能力 基准测试
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