LLM Reasoning 相关度: 9/10

Tutorial on Reasoning for IR & IR for Reasoning

Mohanna Hoveyda, Panagiotis Efstratiadis, Arjen de Vries, Maarten de Rijke
arXiv: 2602.03640v1 发布: 2026-02-03 更新: 2026-02-03

AI 摘要

本教程定义了信息检索中的推理,构建统一分析框架,促进跨学科合作,提升IR系统的推理能力。

主要贡献

  • 定义了信息检索中推理的概念
  • 构建了推理方法的统一分析框架
  • 揭示了现有方法的权衡和互补性,强调了IR在推理系统中的作用

方法论

通过文献综述和分析,构建概念框架,并对现有方法进行映射和比较,从而提供指导。

原文摘要

Information retrieval has long focused on ranking documents by semantic relatedness. Yet many real-world information needs demand more: enforcement of logical constraints, multi-step inference, and synthesis of multiple pieces of evidence. Addressing these requirements is, at its core, a problem of reasoning. Across AI communities, researchers are developing diverse solutions for the problem of reasoning, from inference-time strategies and post-training of LLMs, to neuro-symbolic systems, Bayesian and probabilistic frameworks, geometric representations, and energy-based models. These efforts target the same problem: to move beyond pattern-matching systems toward structured, verifiable inference. However, they remain scattered across disciplines, making it difficult for IR researchers to identify the most relevant ideas and opportunities. To help navigate the fragmented landscape of research in reasoning, this tutorial first articulates a working definition of reasoning within the context of information retrieval and derives from it a unified analytical framework. The framework maps existing approaches along axes that reflect the core components of the definition. By providing a comprehensive overview of recent approaches and mapping current methods onto the defined axes, we expose their trade-offs and complementarities, highlight where IR can benefit from cross-disciplinary advances, and illustrate how retrieval process itself can play a central role in broader reasoning systems. The tutorial will equip participants with both a conceptual framework and practical guidance for enhancing reasoning-capable IR systems, while situating IR as a domain that both benefits and contributes to the broader development of reasoning methodologies.

标签

信息检索 推理 知识推理 语义理解

arXiv 分类

cs.IR cs.AI cs.CL