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Good Secretaries, Bad Truck Drivers? Occupational Gender Stereotypes in Sentiment Analysis

机译:良好的秘书,卡车司机?情感分析中的职业性别陈规定型

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In this work, we investigate the presence of occupational gender stereotypes in sentiment analysis models. Such a task has implications for reducing implicit biases in these models, which are being applied to an increasingly wide variety of downstream tasks. We release a new gender-balanced dataset1 of 800 sentences pertaining to specific professions and propose a methodology for using it as a test bench to evaluate sentiment analysis models. We evaluate the presence of occupational gender stereotypes in 3 different models using our approach, and explore their relationship with societal perceptions of occupations.
机译:在这项工作中,我们调查了情绪分析模型中职业性别刻板印象的存在。这种任务对减少这些模型中的隐含偏差的影响,这些模型正在应用于越来越多的下游任务。我们释放了与特定专业有关的800句话的新性别平衡数据集1,并提出了一种使用它作为测试台来评估情绪分析模型的方法。我们使用我们的方法评估3种不同模型的职业性别刻板印象的存在,并探讨了与职业社会看法的关系。

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