Using direct explanations to validate a multi-layer perceptron network that classifies low back pain patients

M. L. Vaughn, S. Cavill, S. Taylor, M. Foy, A. Fogg
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引用次数: 6

Abstract

Using a new method designed by the first author, this paper shows how direct explanations in the form of a ranked data relationship can be provided to explain the classification of an input case by a standard multilayer perceptron (MLP) network. It is also shown how knowledge in the form of an induced rule can be discovered from the data relationship for each training case. The method is demonstrated for example training cases from a real-world MLP that classifies low back pain patients into three diagnostic classes. It is shown how the validation of the explanations for all training cases provides a way of validating the low back pain MLP network. In validating the network, a number of test cases apparently mis-classified by the MLP were found to have been correctly classified by the network and incorrectly classified by the clinicians.
使用直接解释来验证多层感知器网络对腰痛患者的分类
本文使用第一作者设计的一种新方法,展示了如何以排序数据关系的形式提供直接解释,以解释标准多层感知器(MLP)网络对输入案例的分类。还展示了如何从每个训练案例的数据关系中发现归纳规则形式的知识。该方法通过来自真实世界MLP的训练案例进行了演示,该训练案例将腰痛患者分为三个诊断类别。它显示了如何验证所有训练案例的解释提供了一种验证腰痛MLP网络的方法。在验证网络时,发现许多明显被MLP错误分类的测试用例被网络正确分类,而被临床医生错误分类。
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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