理解和减轻信息检索系统中的性别偏见

IF 8.3 2区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Shirin Seyedsalehi, Amin Bigdeli, Negar Arabzadeh, Batool AlMousawi, Zack Marshall, Morteza Zihayat, Ebrahim Bagheri
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引用次数: 0

摘要

性别偏见是一个普遍存在的问题,持续影响着社会的各个方面,包括信息检索(IR)系统的结果。随着这些系统日益成为获取和浏览当今可获得的大量信息的组成部分,了解和减轻其中的性别偏见的必要性至关重要。这本专著提供了IR系统中性别偏见的起源,表现和后果的全面检查,以及目前用于解决这些偏见的方法。探讨了围绕性别及其在人工智能(AI)系统中的表现的理论框架,特别关注传统的性别二元是如何通过数据和算法过程得以延续和加强的。然后分析了用于识别和测量红外系统内性别偏见的指标和方法,对现有方法及其局限性进行了详细评估。后续部分将讨论性别偏见的来源,包括有偏见的输入查询、检索方法和金标准数据集。提出了各种数据驱动和方法级的消除策略,包括消除神经嵌入的技术和旨在减少红外系统输出中的偏差的算法方法。本专著最后讨论了当前消除偏见工作所面临的挑战和局限性,并提供了对未来研究方向的见解,这些方向可能导致更公平和包容的红外系统。这本专著为信息检索、人工智能和数据科学领域的研究人员、从业者和学生提供了宝贵的资源,提供了解决性别偏见所需的知识和工具,并为公平和公正的信息系统的发展做出了贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding and Mitigating Gender Bias in Information Retrieval Systems

Gender bias is a pervasive issue that continues to influence various aspects of society, including the outcomes of information retrieval (IR) systems. As these systems become increasingly integral to accessing and navigating the vast amounts of information available today, the need to understand and mitigate gender bias within them is paramount. This monograph provides a comprehensive examination of the origins, manifestations, and consequences of gender bias in IR systems, as well as the current methodologies employed to address these biases.

Theoretical frameworks surrounding gender and its representation in artificial intelligence (AI) systems are explored, particularly focusing on how traditional gender binaries are perpetuated and reinforced through data and algorithmic processes. Metrics and methodologies used to identify and measure gender bias within IR systems are then analyzed, offering a detailed evaluation of existing approaches and their limitations.

Subsequent sections address the sources of gender bias, including biased input queries, retrieval methods, and gold standard datasets. Various data-driven and method-level debiasing strategies are presented, including techniques for debiasing neural embeddings and algorithmic approaches aimed at reducing bias in IR system outputs. The monograph concludes with a discussion of the challenges and limitations faced by current debiasing efforts and provides insights into future research directions that could lead to more equitable and inclusive IR systems.

This monograph serves as a valuable resource for researchers, practitioners, and students in the fields of information retrieval, artificial intelligence, and data science, providing the knowledge and tools needed to address gender bias and contribute to the development of fair and unbiased information systems.

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来源期刊
Foundations and Trends in Information Retrieval
Foundations and Trends in Information Retrieval COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
39.10
自引率
0.00%
发文量
3
期刊介绍: The surge in research across all domains in the past decade has resulted in a plethora of new publications, causing an exponential growth in published research. Navigating through this extensive literature and staying current has become a time-consuming challenge. While electronic publishing provides instant access to more articles than ever, discerning the essential ones for a comprehensive understanding of any topic remains an issue. To tackle this, Foundations and Trends® in Information Retrieval - FnTIR - addresses the problem by publishing high-quality survey and tutorial monographs in the field. Each issue of Foundations and Trends® in Information Retrieval - FnT IR features a 50-100 page monograph authored by research leaders, covering tutorial subjects, research retrospectives, and survey papers that provide state-of-the-art reviews within the scope of the journal.
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