可解释的信息检索

Avishek Anand, Procheta Sen, Sourav Saha, Manisha Verma, Mandar Mitra
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引用次数: 1

摘要

本教程介绍了可解释信息检索(ExIR),这是一个新兴领域,专注于在信息检索环境中培养负责任和可信赖的机器学习系统部署。随着该领域在过去4-5年中迅速发展,已经提出了许多方法,这些方法侧重于不同的访问模式、利益相关者和模型开发阶段。本教程旨在介绍ExIR中以ir为中心的概念、分类和评估风格,同时重点介绍ir特定的任务,如排名、文本分类和学习排名系统。我们将深入研究方法族及其对IR的适应性,广泛涵盖事后方法,公理和探索方法,以及设计可解释性方法的最新进展。我们还将讨论针对不同利益相关者(如研究人员、从业人员和最终用户)的ExIR应用,例如在web搜索、专利和法律搜索以及高风险决策任务等环境中。为了便于实际理解,我们将提供一个应用ExIR方法的动手环节,为学生、研究人员和从业者减少入门障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Explainable Information Retrieval
This tutorial presents explainable information retrieval (ExIR), an emerging area focused on fostering responsible and trustworthy deployment of machine learning systems in the context of information retrieval. As the field has rapidly evolved in the past 4-5 years, numerous approaches have been proposed that focus on different access modes, stakeholders, and model development stages. This tutorial aims to introduce IR-centric notions, classification, and evaluation styles in ExIR, while focusing on IR-specific tasks such as ranking, text classification, and learning-to-rank systems. We will delve into method families and their adaptations to IR, extensively covering post-hoc methods, axiomatic and probing approaches, and recent advances in interpretability-by-design approaches. We will also discuss ExIR applications for different stakeholders, such as researchers, practitioners, and end-users, in contexts like web search, patent and legal search, and high-stakes decision-making tasks. To facilitate practical understanding, we will provide a hands-on session on applying ExIR methods, reducing the entry barrier for students, researchers, and practitioners alike.
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