Time Series Model Attribution Visualizations as Explanations

U. Schlegel, D. Keim
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引用次数: 10

Abstract

Attributions are a common local explanation technique for deep learning models on single samples as they are easily extractable and demonstrate the relevance of input values. In many cases, heatmaps visualize such attributions for samples, for instance, on images. However, heatmaps are not always the ideal visualization to explain certain model decisions for other data types. In this review, we focus on attribution visualizations for time series. We collect attribution heatmap visualizations and some alternatives, discuss the advantages as well as disadvantages and give a short position towards future opportunities for attributions and explanations for time series.
时间序列模型归因可视化作为解释
归因是深度学习模型在单个样本上的一种常见的局部解释技术,因为它们很容易提取,并证明了输入值的相关性。在许多情况下,热图将样本的属性可视化,例如在图像上。但是,热图并不总是解释其他数据类型的某些模型决策的理想可视化方法。在这篇综述中,我们主要关注时间序列的归因可视化。我们收集了归因热图可视化和一些替代方案,讨论了其优点和缺点,并对时间序列归因和解释的未来机会给出了一个简短的立场。
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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