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Symbolic Execution for Deep Neural Networks

Authors :
Gopinath, Divya
Wang, Kaiyuan
Zhang, Mengshi
Pasareanu, Corina S.
Khurshid, Sarfraz
Publication Year :
2018

Abstract

Deep Neural Networks (DNN) are increasingly used in a variety of applications, many of them with substantial safety and security concerns. This paper introduces DeepCheck, a new approach for validating DNNs based on core ideas from program analysis, specifically from symbolic execution. The idea is to translate a DNN into an imperative program, thereby enabling program analysis to assist with DNN validation. A basic translation however creates programs that are very complex to analyze. DeepCheck introduces novel techniques for lightweight symbolic analysis of DNNs and applies them in the context of image classification to address two challenging problems in DNN analysis: 1) identification of important pixels (for attribution and adversarial generation); and 2) creation of 1-pixel and 2-pixel attacks. Experimental results using the MNIST data-set show that DeepCheck's lightweight symbolic analysis provides a valuable tool for DNN validation.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1807.10439
Document Type :
Working Paper