Is Wikipedia succeeding in reducing gender bias? Assessing changes in gender bias in Wikipedia using word embeddings

Katja Geertruida Schmahl, T. Viering, S. Makrodimitris, Arman Naseri Jahfari, D. Tax, M. Loog
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引用次数: 13

Abstract

Large text corpora used for creating word embeddings (vectors which represent word meanings) often contain stereotypical gender biases. As a result, such unwanted biases will typically also be present in word embeddings derived from such corpora and downstream applications in the field of natural language processing (NLP). To minimize the effect of gender bias in these settings, more insight is needed when it comes to where and how biases manifest themselves in the text corpora employed. This paper contributes by showing how gender bias in word embeddings from Wikipedia has developed over time. Quantifying the gender bias over time shows that art related words have become more female biased. Family and science words have stereotypical biases towards respectively female and male words. These biases seem to have decreased since 2006, but these changes are not more extreme than those seen in random sets of words. Career related words are more strongly associated with male than with female, this difference has only become smaller in recently written articles. These developments provide additional understanding of what can be done to make Wikipedia more gender neutral and how important time of writing can be when considering biases in word embeddings trained from Wikipedia or from other text corpora.
维基百科在减少性别偏见方面成功了吗?使用词嵌入评估维基百科中性别偏见的变化
用于创建词嵌入(表示词义的向量)的大型文本语料库通常包含刻板的性别偏见。因此,这种不必要的偏差通常也会出现在来自此类语料库的词嵌入和自然语言处理(NLP)领域的下游应用中。为了尽量减少性别偏见在这些环境中的影响,当涉及到偏见在使用的文本语料库中的位置和方式时,需要更多的洞察力。这篇论文通过展示维基百科词嵌入中的性别偏见是如何随着时间的推移而发展的。随着时间的推移,性别偏见的量化表明,艺术相关的词汇变得更加女性偏见。家庭词汇和科学词汇分别对女性词汇和男性词汇有刻板偏见。自2006年以来,这些偏差似乎有所减少,但这些变化并不比在随机单词组中看到的变化更极端。与职业相关的词汇与男性的联系比与女性的联系更紧密,这种差异在最近的文章中只是变得更小。这些发展让我们进一步了解了如何使维基百科更加性别中立,以及在考虑从维基百科或其他文本语料库训练的词嵌入中的偏见时,写作时间的重要性。
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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