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Are Online Reviews of Physicians Biased Against Female Providers?

机译:是对针对女性提供商偏见的医生的在线评论吗?

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Patients increasingly seek out information regarding their healthcare online. Online reviews of caregivers in particular may influence from whom patients seek treatment. Are these sources biased against female providers? To address this question we analyze a new dataset of online patient reviews of male and female healthcare providers with respect to numerical ratings and language use. We perform both regression and (data-driven) qualitative analyses of language via neural embedding models induced over review texts. In both cases we account for provider specialty. To do so while learning embeddings, we explicitly induce specialty, sex, and rating embeddings from review meta-data via a ‘matched-sampling’ training regime. We find that females consistently receive less favorable numerical ratings overall, even after adjusting for specialty. To analyze language use in reviews of male versus female providers, we induce neural embeddings (distributed representations) of gender and qualitatively characterize the ‘distributional semantics’ that this induces. We observe differences in language use, e.g., analysis of average vector similarities over repeated runs reveal that many of the words closest to the coordinates in embedding space associated with positive sentiment and female providers describe interpersonal characteristics (sweet , considerate , caring , personable , compassionate ): such descriptors do not seem as similar to the point corresponding to positive sentiment regarding male providers. To facilitate research in this direction we publicly release data, embeddings, and all code (including Jupyter notebooks) to reproduce our analyses and further explore the data: https://github.com/avi-jit/RateMDs.
机译:患者越来越多地寻求关于他们在线医疗保健的信息。特殊情况的在线评论可能会影响患者寻求治疗的影响。这些来源是否偏向女性提供者?为了解决这个问题,我们分析了对男女医疗保健提供者的新数据集,了解数值评级和语言使用。我们通过在审查文本上诱导的神经嵌入模型来执行回归和(数据驱动的)定性分析。在两种情况下,我们考虑了提供商专业。为此,在学习嵌入时,我们通过“匹配抽样”培训制度明确地从评论元数据中明确诱发专业,性别和评级嵌入式。我们发现女性始终如一地接受较不利的数值额定值,即使在调整专业后也是如此。为了分析男性与女性提供者的评论中的语言用途,我们诱发性别的神经嵌入式(分布式表示),并定性表征了“分布语义”,这诱导。我们观察语言使用的差异,例如,反复运行的平均矢量相似性的分析揭示了与积极情绪和女性提供者相关的嵌入空间中最接近坐标的许多词描述了人际关系特征(甜,体贴,关心,人物,同情):这些描述符似乎与对应于男性提供者的积极情绪相对应的点并不类似。为了促进在此方向上的研究,我们公开释放数据,嵌入式和所有代码(包括Jupyter Notebook)以重现我们的分析,并进一步探索数据:https://github.com/avi-jit/ratemds。

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