Liu Leo Yu-Feng, Liu Yufeng, Zhu Hongtu
Department of Statistics and Operations Research, University of North Carolina at Chapel Hill, Chapel Hill, 27599, NC, USA.
Department of Statistics and Operations Research, Department of Genetics, Department of Biostatistics, Carolina Cancer for Genome Sciences, Lineberger Comprehensive Cancer Center, University of North Carolina at Chapel Hill, Chapel Hill, 27599, NC, USA.
Stat. 2020;9(1). doi: 10.1002/sta4.290. Epub 2020 Apr 22.
Convolutional neural networks (CNNs) have exhibited superior performance in various types of classification and prediction tasks, but their interpretability remains to be low despite years of research effort. It is crucial to improve the ability of existing models to interpret deep neural networks from both theoretical and practical perspectives and to develop new neural network models with interpretable representations. The aim of this paper is to propose a set of novel masked CNN (MCNN) models with better ability to interpret networks and more accurate prediction. The key ideas behind MCNNs are to introduce a latent binary network to extract informative regions of interest that contain important signals for prediction and to integrate the latent binary network with CNNs to achieve better prediction in various supervised learning problems. Extensive numerical studies demonstrate the competitive performance of the proposed MCNN models.
卷积神经网络(CNN)在各类分类和预测任务中表现出卓越性能,但尽管经过多年研究,其可解释性仍然较低。从理论和实践角度提高现有模型解释深度神经网络的能力,并开发具有可解释表示的新神经网络模型至关重要。本文旨在提出一组新颖的掩码卷积神经网络(MCNN)模型,该模型具有更强的网络解释能力和更准确的预测能力。MCNN背后的关键思想是引入一个潜在的二元网络来提取包含预测重要信号的信息性感兴趣区域,并将潜在二元网络与CNN集成,以在各种监督学习问题中实现更好的预测。大量数值研究证明了所提出的MCNN模型的竞争性能。