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Extracting automata from neural networks using active learning

机译:用主动学习从神经网络中提取自动机

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Deep learning is one of the most advanced forms of machine learning. Most modern deep learning models are based on an artificial neural network, and benchmarking studies reveal that neural networks have produced results comparable to and in some cases superior to human experts. However, the generated neural networks are typically regarded as incomprehensible black-box models, which not only limits their applications, but also hinders testing and verifying. In this paper, we present an active learning framework to extract automata from neural network classifiers, which can help users to understand the classifiers. In more detail, we use Angluin’s L* algorithm as a learner and the neural network under learning as an oracle, employing abstraction interpretation of the neural network for answering membership and equivalence queries. Our abstraction consists of value, symbol and word abstractions. The factors that may affect the abstraction are also discussed in the paper. We have implemented our approach in a prototype. To evaluate it, we have performed the prototype on a MNIST classifier and have identified that the abstraction with interval number 2 and block size 1 × 28 offers the best performance in terms of F1 score. We also have compared our extracted DFA against the DFAs learned via the passive learning algorithms provided in LearnLib and the experimental results show that our DFA gives a better performance on the MNIST dataset.
机译:深度学习是最先进的机器学习形式之一。大多数现代化的深度学习模型基于人工神经网络,基准研究表明,神经网络产生了与人类专家优于人类专家的一些情况。然而,所生成的神经网络通常被认为是不可思议的黑盒式模型,这不仅限制了它们的应用,而且还阻碍了测试和验证。在本文中,我们提出了一个主动学习框架来从神经网络分类器中提取自动机,这可以帮助用户了解分类器。更详细地,我们使用Angluin的L *算法作为学习者和学习的神经网络作为Oracle,采用神经网络的抽象解释来应答成员资格和等价查询。我们的抽象包括值,符号和单词抽象。本文还讨论了可能影响抽象的因素。我们在原型中实现了我们的方法。为了评估它,我们在Mnist分类器上执行了原型,并已识别出间隔2和块大小1×28的抽象在F1分数方面提供了最佳性能。我们还将提取的DFA与DFS获悉的DFA相比,通过SearchLib中提供的被动学习算法和实验结果表明我们的DFA在Mnist DataSet上提供了更好的性能。

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