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Investigating the Effectiveness of Mutation Testing Tools in the Context of Deep Neural Networks

机译:在深度神经网络的背景下研究突变测试工具的有效性

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Verifying the correctness of the implementation of machine learning algorithms like neural networks has become a major topic because - for example - its increasing use in the context of safety critical systems like automated or autonomous vehicles. In contrast to evaluating the learning capabilities of such machine learning algorithms, in verification, and particularly in testing we are interested in finding critical scenarios and in giving some sort of guarantees with respect to the underlying used tests. In this paper, we contribute to the area of testing machine learning algorithms and investigate the effectiveness of traditional mutation tools in the context of Deep Neural Networks testing. In particular, we try to answer the question whether mutated neural networks can be identified considering their learning capabilities when compared to the original network. To answer this question, we performed an empirical study using Java code implementations of such networks and a mutation tool to create mutated neural networks models. As an outcome, we are able to identify some mutations to be more likely to be detected than others.
机译:验证诸如神经网络之类的机器学习算法的实现的正确性已成为一个主要话题,因为-例如-在诸如自动或自动驾驶汽车等安全关键系统的背景下,它的使用越来越广泛。与评估此类机器学习算法的学习能力相比,在验证(尤其是测试)中,我们感兴趣的是找到关键场景并希望对所使用的基础测试提供某种保证。在本文中,我们致力于测试机器学习算法领域,并在深度神经网络测试的背景下研究传统变异工具的有效性。特别是,我们尝试回答这样一个问题:与原始网络相比,是否可以考虑到突变神经网络的学习能力来识别它们。为了回答这个问题,我们使用此类网络的Java代码实现以及创建突变神经网络模型的突变工具进行了实证研究。结果,我们能够识别出某些突变比其他突变更有可能被检测到。

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