Variable Strength Combinatorial Testing for Deep Neural Networks

Yanshan Chen, Ziyuan Wang, Dong Wang, Chunrong Fang, Zhenyu Chen
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引用次数: 6

Abstract

In deep neural networks (DNNs), each neuron in the post-layer receives the influence of all the neurons in the pre-layer. As we known, different connections in a DNN model have different weights. It means that, different combinations of pre-layer neurons have different effects on the post-layer neurons. Therefore, the variable strength combinatorial testing can reflect the effect of combination interaction of neurons in the pre-layer on the neurons in the post-layer. In this paper, we propose to adopt variable strength combinatorial testing technique on DNNs testing. In order to modeling the effect of combinatorial interaction of pre-layer neurons on the post-layer neurons, we propose three methods to construct variable strength combinatorial interaction relationship for DNNs. The experimental results show that, 1) variable strength combinatorial coverage criteria are discriminating to measure the adequacy of DNNs testing, and 2) there is correlation between variable strength combinatorial coverage and adversarial detection.
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深度神经网络的变强度组合测试
在深度神经网络(dnn)中,后层中的每个神经元都受到前层中所有神经元的影响。正如我们所知,DNN模型中不同的连接具有不同的权重。这意味着不同的前层神经元组合对后层神经元有不同的影响。因此,变强度组合测试可以反映前层神经元的组合相互作用对后层神经元的影响。本文提出在深度神经网络的测试中采用变强度组合测试技术。为了模拟前层神经元的组合相互作用对后层神经元的影响,我们提出了三种方法来构建dnn的变强度组合相互作用关系。实验结果表明,1)变强度组合覆盖准则对dnn测试的充分性具有判别性;2)变强度组合覆盖与对抗检测之间存在相关性。
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