算法知识能阻止女性成为算法偏见的目标吗?微博上的新数字鸿沟

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-05-27 DOI:10.1080/08838151.2023.2218955
Yang Zhang, Huashan Chen
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引用次数: 0

摘要

在推荐系统中,用户的算法知识对于避免用户受到算法偏差的影响起着至关重要的作用。用户的性别已经被发现与算法偏差相关,但也留下了一个问题,即这种关系是否可以用算法知识来描述。本文以微博为例,从数字鸿沟理论的角度阐明了上述问题。我们将传统方法(问卷调查)与深度学习计算方法相结合,在两个顺序研究中解释算法偏差。我们的研究结果表明,算法知识只对男性有效,而不能保护女性。用户关注的对象决定了他们在微博上接触到的信息,这使得女性用户的算法知识毫无用处。这项工作为算法偏见提供了一个有价值的视角:我们将算法偏见视为一种新的数字鸿沟,并通过应用数字鸿沟视角有助于理解性别差异。在方法上,我们通过整合传统方法和计算方法,从民间理论的角度来解释算法偏差。
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Can Algorithm Knowledge Stop Women from Being Targeted by Algorithm Bias? The New Digital Divide on Weibo
ABSTRACT Algorithm knowledge of users plays a crucial role in avoiding them from algorithm bias in recommendation systems. Gender of users has been found to correlate with algorithm bias, but also leaving behind a question of whether this relationship can be described by algorithm knowledge. By using Weibo as an example system, we clarify the aforementioned question from a digital divide theory perspective. We combine a traditional method (questionnaire) with a deep learning computational method to explain algorithm bias in two sequential studies. Our findings suggest that algorithm knowledge solely works for men while fails to protect women. Who users follow helps determine what information they are exposed to on Weibo, and this renders female users’ algorithm knowledge useless. This work provides a valuable perspective on algorithm bias: we view algorithm bias as a new digital divide and contribute to the understanding of gender differences by applying the digital divide perspective. Methodologically, we contribute by integrating traditional and computational methods to explain algorithm bias from a folk theory perspective.
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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