公平感知机器学习的数据集调查

IF 6.4 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Tai Le Quy, Arjun Roy, Vasileios Iosifidis, Eirini Ntoutsi
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引用次数: 116

摘要

随着决策越来越依赖于机器学习(ML)和(大)数据,数据驱动的人工智能系统的公平性问题越来越受到研究和行业的关注。已经提出了各种各样的公平意识ML解决方案,其中涉及数据、学习算法和/或模型输出中与公平相关的干预。然而,提出新方法的一个重要部分是在代表现实和不同设置的基准数据集上进行经验评估。因此,在本文中,我们概述了用于公平感知机器学习的真实世界数据集。我们重点关注表格数据作为公平感知机器学习最常见的数据表示形式。我们通过使用贝叶斯网络识别不同属性之间的关系开始我们的分析,特别是关于受保护属性和类属性。为了更深入地了解数据集中的偏差,我们使用探索性分析研究了有趣的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A survey on datasets for fairness‐aware machine learning

A survey on datasets for fairness‐aware machine learning
As decision‐making increasingly relies on machine learning (ML) and (big) data, the issue of fairness in data‐driven artificial intelligence systems is receiving increasing attention from both research and industry. A large variety of fairness‐aware ML solutions have been proposed which involve fairness‐related interventions in the data, learning algorithms, and/or model outputs. However, a vital part of proposing new approaches is evaluating them empirically on benchmark datasets that represent realistic and diverse settings. Therefore, in this paper, we overview real‐world datasets used for fairness‐aware ML. We focus on tabular data as the most common data representation for fairness‐aware ML. We start our analysis by identifying relationships between the different attributes, particularly with respect to protected attributes and class attribute, using a Bayesian network. For a deeper understanding of bias in the datasets, we investigate interesting relationships using exploratory analysis.
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来源期刊
Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery
Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-COMPUTER SCIENCE, THEORY & METHODS
CiteScore
22.70
自引率
2.60%
发文量
39
审稿时长
>12 weeks
期刊介绍: The goals of Wiley Interdisciplinary Reviews-Data Mining and Knowledge Discovery (WIREs DMKD) are multifaceted. Firstly, the journal aims to provide a comprehensive overview of the current state of data mining and knowledge discovery by featuring ongoing reviews authored by leading researchers. Secondly, it seeks to highlight the interdisciplinary nature of the field by presenting articles from diverse perspectives, covering various application areas such as technology, business, healthcare, education, government, society, and culture. Thirdly, WIREs DMKD endeavors to keep pace with the rapid advancements in data mining and knowledge discovery through regular content updates. Lastly, the journal strives to promote active engagement in the field by presenting its accomplishments and challenges in an accessible manner to a broad audience. The content of WIREs DMKD is intended to benefit upper-level undergraduate and postgraduate students, teaching and research professors in academic programs, as well as scientists and research managers in industry.
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