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Gender stereotype reinforcement: Measuring the gender bias conveyed by ranking algorithms

机译:性别刻板印象加固:测量排名算法输送的性别偏差

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摘要

Search Engines (SE) have been shown to perpetuate well-known gender stereotypes identified in psychology literature and to influence users accordingly. Similar biases were found encoded in Word Embeddings (WEs) learned from large online corpora. In this context, we propose the Gender Stereotype Reinforcement (GSR) measure, which quantifies the tendency of a SE to support gender stereotypes, leveraging gender-related information encoded in WEs. Through the critical lens of construct validity, we validate the proposed measure on synthetic and real collections. Subsequently, we use GSR to compare widely-used Information Retrieval ranking algorithms, including lexical, semantic, and neural models. We check if and how ranking algorithms based on WEs inherit the biases of the underlying embeddings. We also consider the most common debiasing approaches for WEs proposed in the literature and test their impact in terms of GSR and common performance measures. To the best of our knowledge, GSR is the first specifically tailored measure for IR, capable of quantifying representational harms.
机译:搜索引擎(SE)已被证明延续了在心理学文献中确定的着名的性别刻板印象,并相应地影响用户。从大型在线上学到的Word Embeddings(WES)中被发现类似的偏差。在这种情况下,我们提出了性别刻板型强化(GSR)测量,这量化了SE支持性别刻板印象的趋势,利用在WES中编码的性别相关信息。通过构建有效性的关键镜头,我们验证了综合和实际收集的拟议措施。随后,我们使用GSR比较广泛使用的信息检索排名算法,包括词汇,语义和神经模型。我们检查是否基于WES的排名算法是如何继承底层嵌入的偏差。我们还考虑在文献中提出的WES最常见的脱叠方法,并对GSR的影响以及共同的绩效措施进行测试。据我们所知,GSR是IR的第一个专门定制的措施,能够量化代表性危害。

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