Semantic match: Debugging feature attribution methods in XAI for healthcare

G. Ciná, Tabea E. Rober, R. Goedhart, cS. .Ilker Birbil
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引用次数: 1

Abstract

The recent spike in certified Artificial Intelligence (AI) tools for healthcare has renewed the debate around adoption of this technology. One thread of such debate concerns Explainable AI (XAI) and its promise to render AI devices more transparent and trustworthy. A few voices active in the medical AI space have expressed concerns on the reliability of Explainable AI techniques and especially feature attribution methods, questioning their use and inclusion in guidelines and standards. Despite valid concerns, we argue that existing criticism on the viability of post-hoc local explainability methods throws away the baby with the bathwater by generalizing a problem that is specific to image data. We begin by characterizing the problem as a lack of semantic match between explanations and human understanding. To understand when feature importance can be used reliably, we introduce a distinction between feature importance of low- and high-level features. We argue that for data types where low-level features come endowed with a clear semantics, such as tabular data like Electronic Health Records (EHRs), semantic match can be obtained, and thus feature attribution methods can still be employed in a meaningful and useful way. Finally, we sketch a procedure to test whether semantic match has been achieved.
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语义匹配:调试用于医疗保健的XAI中的特性归属方法
最近,经过认证的医疗保健人工智能(AI)工具激增,重新引发了关于采用这项技术的争论。这种争论的一个主题是可解释人工智能(XAI)及其使人工智能设备更加透明和值得信赖的承诺。在医疗人工智能领域活跃的一些声音对可解释人工智能技术的可靠性表示担忧,特别是特征归因方法,质疑它们的使用和纳入指南和标准。尽管存在有效的担忧,但我们认为,对事后局部可解释性方法可行性的现有批评通过概括特定于图像数据的问题,将婴儿与洗澡水一起扔掉。我们首先将这个问题描述为解释和人类理解之间缺乏语义匹配。为了理解什么时候可以可靠地使用特征重要性,我们引入了低特征重要性和高特征重要性之间的区别。我们认为,对于底层特征被赋予明确语义的数据类型,如电子健康记录(EHRs)等表格数据,可以获得语义匹配,因此特征归因方法仍然可以以有意义和有用的方式使用。最后,我们提出了一个测试语义匹配是否实现的程序。
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