量化深度神经网络的生成对抗集和类特征适用性

Edward Collier, S. Mukhopadhyay
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引用次数: 2

摘要

最近在深度神经网络方面的工作试图描述网络学习特征的性质,以及学习到的特征如何适用于各种问题集。深度神经网络的适用性可分为三个子问题;设置适用性、类适用性和实例适用性。在这项工作中,我们试图量化在对抗训练中学习到的特征的适用性,特别关注集合和类的适用性。我们将测量适用性的技术应用于在各种数据集上训练的生成器和鉴别器,以量化适用性。
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GAP: Quantifying the Generative Adversarial Set and Class Feature Applicability of Deep Neural Networks
Recent work in deep neural networks has sought to characterize the nature in which a network learns features and how applicable learnt features are to various problem sets. Deep neural network applicability can be split into three sub-problems; set applicability, class applicability, and instance applicability. In this work we seek to quantify the applicability of features learned during adversarial training, focusing specifically on set and class applicability. We apply techniques for measuring applicability to both generators and discriminators trained on various data sets to quantify applicability.
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