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Graph Neural Network-based Vulnerability Predication

机译:基于图神经网络的漏洞预测

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Automatic vulnerability detection is challenging. In this paper, we report our in-progress work of vulnerability prediction based on graph neural network (GNN). We propose a general GNN-based framework for predicting the vulnerabilities in program functions. We study the different instantiations of the framework in representative program graph representations, initial node encodings, and GNN learning methods. The preliminary experimental results on a representative benchmark indicate that the GNN-based method can improve the accuracy and recall rates of vulnerability prediction.
机译:自动漏洞检测具有挑战性。在本文中,我们报告了基于图神经网络(GNN)进行的漏洞预测的正在进行的工作。我们提出了一个基于GNN的通用框架来预测程序功能中的漏洞。我们在代表性程序图表示,初始节点编码和GNN学习方法中研究框架的不同实例。基于代表性基准的初步实验结果表明,基于GNN的方法可以提高漏洞预测的准确性和召回率。

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