Symbolic Execution for Importance Analysis and Adversarial Generation in Neural Networks

D. Gopinath, Mengshi Zhang, Kaiyuan Wang, Ismet Burak Kadron, C. Pasareanu, S. Khurshid
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引用次数: 17

Abstract

Deep Neural Networks (DNN) are increasingly used in a variety of applications, many of them with serious safety and security concerns. This paper describes DeepCheck, a new approach for validating DNNs based on core ideas from program analysis, specifically from symbolic execution. DeepCheck implements novel techniques for lightweight symbolic analysis of DNNs and applies them to address two challenging problems in DNN analysis: 1) identification of important input features and 2) leveraging those features to create adversarial inputs. Experimental results with an MNIST image classification network and a sentiment network for textual data show that DeepCheck promises to be a valuable tool for DNN analysis.
神经网络中重要性分析和对抗生成的符号执行
深度神经网络(DNN)越来越多地应用于各种应用中,其中许多应用具有严重的安全性和安全性问题。本文描述了DeepCheck,这是一种基于程序分析(特别是符号执行)的核心思想来验证dnn的新方法。DeepCheck实现了DNN轻量级符号分析的新技术,并将其应用于解决DNN分析中的两个具有挑战性的问题:1)识别重要的输入特征,2)利用这些特征创建对抗性输入。使用MNIST图像分类网络和文本数据情感网络进行的实验结果表明,DeepCheck有望成为深度神经网络分析的一个有价值的工具。
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