正确的错误原因:可解释的ML技术能检测到虚假的相关性吗?

Susu Sun, Lisa M. Koch, Christian F. Baumgartner
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引用次数: 1

摘要

虽然深度神经网络模型提供了无与伦比的分类性能,但它们容易学习数据中的虚假相关性。如果测试数据来自与训练数据相同的分布,那么使用性能度量很难检测到这种对混杂信息的依赖。可解释的ML方法,如事后解释或固有可解释分类器,承诺识别错误的模型推理。然而,这些技术是否真的能做到这一点,证据不一。在本文中,我们提出了一个严格的评估策略来评估解释技术正确识别虚假相关的能力。使用该策略,我们评估了五种事后解释技术和一种内在可解释方法,以检测胸部x线诊断任务中人为添加的三种类型的混杂因素的能力。我们发现,事后技术SHAP,以及固有的可解释的Attri-Net提供了最好的性能,可以用来可靠地识别错误的模型行为。
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Right for the Wrong Reason: Can Interpretable ML Techniques Detect Spurious Correlations?
While deep neural network models offer unmatched classification performance, they are prone to learning spurious correlations in the data. Such dependencies on confounding information can be difficult to detect using performance metrics if the test data comes from the same distribution as the training data. Interpretable ML methods such as post-hoc explanations or inherently interpretable classifiers promise to identify faulty model reasoning. However, there is mixed evidence whether many of these techniques are actually able to do so. In this paper, we propose a rigorous evaluation strategy to assess an explanation technique's ability to correctly identify spurious correlations. Using this strategy, we evaluate five post-hoc explanation techniques and one inherently interpretable method for their ability to detect three types of artificially added confounders in a chest x-ray diagnosis task. We find that the post-hoc technique SHAP, as well as the inherently interpretable Attri-Net provide the best performance and can be used to reliably identify faulty model behavior.
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