Making It Simple? Training Deep Learning Models Toward Simplicity

M. Repetto, D. La Torre
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引用次数: 1

Abstract

Deep Learning aims to achieve high performances at the expense of explainability. Explainable Artificial Intelligence consists of all the methods addressing this problem. These methods do not provide interpretability right away, and their usage is limited to model debugging. Furthermore, it’s unclear when an explanation qualifies as understandable. This paper aims at creating a double backpropagation technique restricting the model’s feature effects. The approach ensures interpretable Deep Learning models’ explanations during the learning phase. The problem is framed as a Multicriteria one allowing the stakeholders to control the degree of regularization. As a result, the Deep Learning model embodies simple interpretability from the start and is compliant with recent regulations. A series of numerical examples show that our method produces performant yet flexible models that can generalize even when data is scarce.
让它变得简单?训练深度学习模型走向简单
深度学习的目标是以牺牲可解释性为代价来实现高性能。可解释的人工智能包括解决这个问题的所有方法。这些方法不能立即提供可解释性,它们的使用仅限于模型调试。此外,我们也不清楚什么时候一种解释才算可以理解。本文旨在建立一种双重反向传播技术来限制模型的特征效应。该方法确保深度学习模型在学习阶段的解释是可解释的。这个问题是一个多标准的问题,允许利益相关者控制正则化的程度。因此,深度学习模型从一开始就体现了简单的可解释性,并且符合最新的法规。一系列的数值例子表明,我们的方法产生了性能良好且灵活的模型,即使在数据稀缺的情况下也可以进行泛化。
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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