Feature Importance Identification through Bottleneck Reconstruction

Linsong Chu, R. Raghavendra, M. Srivatsa, A. Preece, Daniel Harborne
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Abstract

We address the problem of feature importance. Often, when working with classification or regression problems, the results of black-box deep learning techniques are held to scrutiny in an effort to interpret which and to what extent various features affect outcome. We address this issue specifically when the model has a bottleneck which we will be used to infer feature importance. In this paper, we apply this technique to weather data and study which weather features affect traffic most. To this end, we introduce convolutional spatial embedding to convert data with spatial information into spatial images that are suitable for convolutional neural networks. An advantage of our approach is in dealing with input that has highly correlated features, where removing even an important feature will not increase loss.
瓶颈重构特征重要性识别
我们解决了特征重要性的问题。通常,在处理分类或回归问题时,需要仔细检查黑箱深度学习技术的结果,以解释各种特征对结果的影响。当模型遇到瓶颈时,我们会专门解决这个问题,我们将使用瓶颈来推断特征的重要性。在本文中,我们将该技术应用于天气数据,研究哪些天气特征对交通影响最大。为此,我们引入卷积空间嵌入,将具有空间信息的数据转换为适合卷积神经网络的空间图像。我们方法的一个优点是在处理具有高度相关特征的输入时,即使删除一个重要的特征也不会增加损失。
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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