Hands on Data and Algorithmic Bias in Recommender Systems

Ludovico Boratto, M. Marras
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引用次数: 3

Abstract

This tutorial provides a common ground for both researchers and practitioners interested in data and algorithmic bias in recommender systems. Guided by real-world examples in various domains, we introduce problem space and concepts underlying bias investigation in recommendation. Then, we practically show two use cases, addressing biases that lead to disparate exposure of items based on their popularity and to systematically discriminate against a legally-protected class of users. Finally, we cover a range of techniques for evaluating and mitigating the impact of these biases on the recommended lists, including pre-, in-, and post-processing procedures. This tutorial is accompanied by Jupyter notebooks putting into practice core concepts in data from real-world platforms.
推荐系统中的数据和算法偏差
本教程为对推荐系统中的数据和算法偏差感兴趣的研究人员和实践者提供了一个共同的基础。在不同领域的实际例子的指导下,我们介绍了推荐中偏见调查的问题空间和概念。然后,我们实际展示了两个用例,解决了基于受欢迎程度导致不同项目暴露的偏见,并系统地歧视受法律保护的用户类别。最后,我们介绍了一系列评估和减轻这些偏差对推荐列表影响的技术,包括预处理、中处理和后处理程序。本教程附有Jupyter笔记本,将来自现实世界平台的数据中的核心概念付诸实践。
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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