Structural Coverage Criteria for Neural Networks Could Be Misleading

Zenan Li, Xiaoxing Ma, Chang Xu, Chun Cao
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引用次数: 82

Abstract

There is a dramatically increasing interest in the quality assurance for DNN-based systems in the software engineering community. An emerging hot topic in this direction is structural coverage criteria for testing neural networks, which are inspired by coverage metrics used in conventional software testing. In this short paper, we argue that these criteria could be misleading because of the fundamental differences between neural networks and human written programs. Our preliminary exploration shows that (1) adversarial examples are pervasively distributed in the finely divided space defined by such coverage criteria, while available natural samples are very sparse, and as a consequence, (2) previously reported fault-detection "capabilities" conjectured from high coverage testing are more likely due to the adversary-oriented search but not the real "high" coverage.
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神经网络的结构覆盖标准可能会产生误导
在软件工程社区中,对基于dnn的系统的质量保证的兴趣急剧增加。在这个方向上出现的一个热门话题是测试神经网络的结构覆盖标准,它受到传统软件测试中使用的覆盖度量的启发。在这篇短文中,我们认为这些标准可能具有误导性,因为神经网络和人类书面程序之间存在根本差异。我们的初步研究表明:(1)对抗性样本普遍分布在由这种覆盖标准定义的精细划分的空间中,而可用的自然样本非常稀疏,因此(2)先前报道的从高覆盖测试中推测出的故障检测“能力”更有可能是由于面向对手的搜索,而不是真正的“高”覆盖。
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