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Verification of Recurrent Neural Networks for Cognitive Tasks via Reachability Analysis

机译:通过可达性分析验证认知任务的经常性神经网络

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Recurrent Neural Networks (RNNs) are one of the most successful neural network architectures that deal with temporal sequences, e.g., speech and text recognition. Recently, RNNs have been shown to be useful in cognitive neuroscience as a model of decisionmaking. RNNs can be trained to solve the same behavioral tasks performed by humans and other animals in decision-making experiments, allowing for a direct comparison between networks and experimental subjects. Analysis of RNNs is expected to be a simpler problem than the analysis of neural activity. However, in practice, reasoning about an RNN's behaviour is a challenging problem. In this work, we take an approach based on formal verification for the analysis of RNNs. We make two main contributions. First, we consider the cognitive domain and formally define a set of useful properties to analyse for a popular experimental task. Second, we employ and adapt well-known verification techniques for reachability analysis to our focus domain, i.e., polytope propagation, invariant detection, and counter-example-guided abstraction refinement. Our experiments show that our techniques can effectively solve classes of benchmark problems that are challenging for state-of-the-art verification tools.
机译:经常性神经网络(RNNS)是处理时间序列,例如语音和文本识别的最成功的神经网络架构之一。最近,RNNS已被证明在认知神经科学中有用作为决策模型。可以训练RNN,以解决人类和其他动物在决策实验中执行的相同行为任务,允许直接比较网络和实验对象。预计RNN的分析是比神经活动分析更简单的问题。然而,在实践中,推理关于RNN的行为是一个具有挑战性的问题。在这项工作中,我们采取了一种基于正式验证来分析RNN的方法。我们做出了两个主要贡献。首先,我们考虑认知域并正式定义一组有用的属性来分析流行的实验任务。其次,我们采用并适应众所周知的验证技术,以便对我们的焦点域,即多容孔传播,不变检测和反向示例引导抽象改进进行可达性分析。我们的实验表明,我们的技术可以有效地解决了最先进的验证工具具有挑战性的基准问题的课程。

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