会话搜索中的偏见:个性化知识图谱的双刃剑

E. Gerritse, Faegheh Hasibi, A. D. Vries
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引用次数: 21

摘要

会话式人工智能系统被用于个人设备,为用户提供高度个性化的内容。个性化知识图(PKGs)是最近提出的一种将用户信息以结构化形式存储并根据用户喜好定制答案的方法。然而,个人化容易放大偏见,并导致回音室现象。在本文中,我们讨论了会话搜索系统中不同类型的偏差,重点讨论了与pkg相关的偏差。我们回顾了文献中偏见的现有定义:人偏见、算法偏见以及两者的结合,并进一步提出了针对会话搜索系统解决这些偏见的不同策略。最后,我们讨论了测量偏差和评估用户满意度的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bias in Conversational Search: The Double-Edged Sword of the Personalized Knowledge Graph
Conversational AI systems are being used in personal devices, providing users with highly personalized content. Personalized knowledge graphs (PKGs) are one of the recently proposed methods to store users' information in a structured form and tailor answers to their liking. Personalization, however, is prone to amplifying bias and contributing to the echo-chamber phenomenon. In this paper, we discuss different types of biases in conversational search systems, with the emphasis on the biases that are related to PKGs. We review existing definitions of bias in the literature: people bias, algorithm bias, and a combination of the two, and further propose different strategies for tackling these biases for conversational search systems. Finally, we discuss methods for measuring bias and evaluating user satisfaction.
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