Hurtful words: quantifying biases in clinical contextual word embeddings

H. Zhang, Amy X. Lu, Mohamed Abdalla, Matthew B. A. McDermott, M. Ghassemi
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引用次数: 109

Abstract

In this work, we examine the extent to which embeddings may encode marginalized populations differently, and how this may lead to a perpetuation of biases and worsened performance on clinical tasks. We pretrain deep embedding models (BERT) on medical notes from the MIMIC-III hospital dataset, and quantify potential disparities using two approaches. First, we identify dangerous latent relationships that are captured by the contextual word embeddings using a fill-in-the-blank method with text from real clinical notes and a log probability bias score quantification. Second, we evaluate performance gaps across different definitions of fairness on over 50 downstream clinical prediction tasks that include detection of acute and chronic conditions. We find that classifiers trained from BERT representations exhibit statistically significant differences in performance, often favoring the majority group with regards to gender, language, ethnicity, and insurance status. Finally, we explore shortcomings of using adversarial debiasing to obfuscate subgroup information in contextual word embeddings, and recommend best practices for such deep embedding models in clinical settings.
伤人词:临床语境词嵌入中的量化偏差
在这项工作中,我们研究了嵌入在多大程度上可能对边缘人群进行不同的编码,以及这可能如何导致偏见的延续和临床任务表现的恶化。我们在MIMIC-III医院数据集的医疗记录上预训练深度嵌入模型(BERT),并使用两种方法量化潜在的差异。首先,我们使用来自真实临床记录的文本和对数概率偏差评分量化的填空方法,识别由上下文词嵌入捕获的危险潜在关系。其次,我们评估了50多个下游临床预测任务中不同公平性定义的绩效差距,包括急性和慢性疾病的检测。我们发现,从BERT表示中训练出来的分类器在性能上表现出统计学上显著的差异,通常在性别、语言、种族和保险状况方面倾向于大多数群体。最后,我们探讨了在上下文词嵌入中使用对抗性去偏见来混淆子组信息的缺点,并推荐了在临床环境中使用这种深度嵌入模型的最佳实践。
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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