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Testing the Robustness of Attribution Methods for Convolutional Neural Networks in MRI-Based Alzheimer's Disease Classification

机译:在基于MRI的阿尔茨海默氏病分类中测试卷积神经网络归因方法的鲁棒性

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摘要

Attribution methods are an easy to use tool for investigating and validating machine learning models. Multiple methods have been suggested in the literature and it is not yet clear which method is most suitable for a given task. In this study, we tested the robustness of four attribution methods, namely gradient * input, guided backprop-agation, layer-wise relevance propagation and occlusion, for the task of Alzheimer's disease classification. We have repeatedly trained a convolutional neural network (CNN) with identical training settings in order to separate structural MRI data of patients with Alzheimer's disease and healthy controls. Afterwards, we produced attribution maps for each subject in the test data and quantitatively compared them across models and attribution methods. We show that visual comparison is not sufficient and that some widely used attribution methods produce highly inconsistent outcomes.
机译:归因方法是用于研究和验证机器学习模型的易于使用的工具。文献中已经提出了多种方法,尚不清楚哪种方法最适合给定的任务。在这项研究中,我们测试了四种归因方法的稳健性,即梯度*输入,引导后向传播,分层相关传播和遮挡,用于阿尔茨海默氏病的分类。我们已经用相同的训练设置反复训练了卷积神经网络(CNN),以分离患有阿尔茨海默氏病的患者和健康对照者的结构MRI数据。之后,我们在测试数据中为每个主题生成了归因图,并在模型和归因方法之间进行了定量比较。我们表明,视觉比较是不够的,并且一些广泛使用的归因方法产生了高度不一致的结果。

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