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Vulnerability Detection for Source Code Using Contextual LSTM

机译:使用上下文LSTM对源代码进行漏洞检测

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With the development of Internet technology, software vulnerabilities have become a major threat to current computer security. In this work, we propose the vulnerability detection for source code using Contextual LSTM. Compared with CNN and LSTM, we evaluated the CLSTM on 23185 programs, which are collected from SARD. We extracted the features through the program slicing. Based on the features, we used the natural language processing to analysis programs with source code. The experimental results demonstrate that CLSTM has the best performance for vulnerability detection, reaching the accuracy of 96.711% and the F1 score of 0.96984.
机译:随着Internet技术的发展,软件漏洞已成为当前计算机安全的主要威胁。在这项工作中,我们建议使用上下文LSTM对源代码进行漏洞检测。与CNN和LSTM相比,我们评估了从SARD收集的23185个程序的CLSTM。我们通过程序切片提取了特征。基于这些功能,我们使用自然语言处理来分析带有源代码的程序。实验结果表明,CLSTM的漏洞检测性能最佳,准确度达到96.711%,F1得分为0.96984。

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