Retraction:SFN: A Novel Scalable Feature Network for Vulnerability Representation of Open-Source Codes

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Abstract

Vulnerability detection technology has become a hotspot in the field of software security, and most of the current methods do not have a complete consideration during code characterizing, which leads to problems such as information loss. Therefore, this paper proposes one class of Scalable Feature Network (SFN), a composite feature extraction method based on Continuous Bag of Words and Convolutional Neural Network. In addition, to characterize the source code more comprehensively, we construct multiscale code metrics in terms of semantic-, line-, and function granularity. In order to verify the effectiveness of the SFN, this paper builds a Scalable Vulnerability Detection Model (SVDM) by combining SFN with Bi-LSTM. The experimental results show that the proposed SVDM can obtain precision over 84.3% and recall at 83.4%, respectively, while both FNR and FPR are less than 17%.

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Guo, J., Wang, Z., Zhang, L., Xue, Y., Long, K., Jing, X., … Li, G. (2022). Retraction:SFN: A Novel Scalable Feature Network for Vulnerability Representation of Open-Source Codes. Computational Intelligence and Neuroscience. Hindawi Limited. https://doi.org/10.1155/2022/2998448

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