多模态临床NLP中文本特定与黑盒公平性算法的分析

John Chen, Ian Berlot-Attwell, Safwan Hossain, Xindi Wang, Frank Rudzicz
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引用次数: 9

摘要

临床机器学习越来越多,以结构化表格格式和非结构化形式(如自由文本)收集。我们提出了一个探索多模式临床数据集公平性的新任务,对下游医学预测任务采用均等的赔率。为此,我们研究了一种与模式无关的公平算法——均等赔率后处理——并将其与文本特定的公平算法进行比较:去偏见临床词嵌入。尽管事实上,去偏见词嵌入并没有明确地解决受保护群体的平等几率问题,但我们表明,特定于文本的公平方法可以同时实现经典公平概念的良好平衡。我们的工作为临床NLP和公平的关键交叉领域的未来工作打开了大门。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analyzing Text Specific vs Blackbox Fairness Algorithms in Multimodal Clinical NLP
Clinical machine learning is increasingly multimodal, collected in both structured tabular formats and unstructured forms such as free text. We propose a novel task of exploring fairness on a multimodal clinical dataset, adopting equalized odds for the downstream medical prediction tasks. To this end, we investigate a modality-agnostic fairness algorithm - equalized odds post processing - and compare it to a text-specific fairness algorithm: debiased clinical word embeddings. Despite the fact that debiased word embeddings do not explicitly address equalized odds of protected groups, we show that a text-specific approach to fairness may simultaneously achieve a good balance of performance classical notions of fairness. Our work opens the door for future work at the critical intersection of clinical NLP and fairness.
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