| Literature DB >> 36105945 |
Huyong Yan1,2,3,4, Li Feng5, You Yu6, Weiling Liao5, Lei Feng7,8, Jingyue Zhang4, Dan Liu9, Ying Zou9, Chongwen Liu1,2,3, Linfa Qu10, Xiaoman Zhang10.
Abstract
Cross-site scripting (XSS) attacks are currently one of the most threatening network attack methods. Effectively detecting and intercepting XSS attacks is an important research topic in the network security field. This manuscript proposes a convolutional neural network based on a modified ResNet block and NiN model (MRBN-CNN) to address this problem. The main innovations of this model are to preprocess the URL according to the syntax and semantic characteristics of XSS attack script encoding, improve the ResNet residual module, extract features from three different angles, and replace the full connection layer in combination with the 1*1 convolution characteristics. Compared with the traditional machine learning and deep learning detection models, it is found that this model has better performance and convergence time. In addition, the proposed method has a detection rate compared to a baseline of approximately 75% of up to 99.23% accuracy, 99.94 precision, and a 98.53% recall value.Entities:
Keywords: ResNet; URL; XSS; code injection; word vector
Year: 2022 PMID: 36105945 PMCID: PMC9464832 DOI: 10.3389/fncom.2022.981739
Source DB: PubMed Journal: Front Comput Neurosci ISSN: 1662-5188 Impact factor: 3.387