Fairness of Machine Learning in Search Engines

Yi Fang, Hongfu Liu, Zhiqiang Tao, Mikhail Yurochkin
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引用次数: 1

Abstract

Fairness has gained increasing importance in a variety of AI and machine learning contexts. As one of the most ubiquitous applications of machine learning, search engines mediate much of the information experiences of members of society. Consequently, understanding and mitigating potential algorithmic unfairness in search have become crucial for both users and systems. In this tutorial, we will introduce the fundamentals of fairness in machine learning, for both supervised learning such as classification and ranking, and unsupervised learning such as clustering. We will then present the existing work on fairness in search engines, including the fairness definitions, evaluation metrics, and taxonomies of methodologies. This tutorial will help orient information retrieval researchers to algorithmic fairness, provide an introduction to the growing literature on this topic, and gathering researchers and practitioners interested in this research direction.
搜索引擎中机器学习的公平性
公平在各种人工智能和机器学习环境中变得越来越重要。作为机器学习最普遍的应用之一,搜索引擎调解了社会成员的大部分信息体验。因此,理解和减轻搜索中潜在的算法不公平对用户和系统都至关重要。在本教程中,我们将介绍机器学习中公平性的基本原理,包括监督学习(如分类和排名)和非监督学习(如聚类)。然后,我们将介绍关于搜索引擎公平性的现有工作,包括公平性定义、评估指标和方法分类。本教程将帮助信息检索研究人员了解算法公平性,介绍关于该主题的日益增长的文献,并收集对该研究方向感兴趣的研究人员和从业者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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