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A PHP and JSP Web Shell Detection System with Text Processing Based on Machine Learning

机译:基于机器学习的文本处理的PHP和JSP Web壳体检测系统

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Web shell is one of the most common network attack methods, and traditional detection methods may not detect complex and flexible variants of web shell attacks. In this paper, we present a comprehensive detection system that can detect both PHP and JSP web shells. After file classification, we use different feature extraction methods, i.e. AST for PHP files and bytecode for JSP files. We present a detection model based on text processing methods including TF-IDF and Word2vec algorithms. We combine different kinds of machine learning algorithms and perform a comprehensively controlled experiment. After the experiment and evaluation, we choose the detection machine learning model of the best performance, which can achieve a high detection accuracy above 98%.
机译:Web Shell是最常见的网络攻击方法之一,传统的检测方法可能无法检测到Web壳攻击的复杂和灵活的变体。在本文中,我们提供了一个可以检测PHP和JSP Web壳的全面检测系统。文件分类后,我们使用不同的特征提取方法,即AST for PHP文件和eStecode for JSP文件。我们介绍了一种基于文本处理方法的检测模型,包括TF-IDF和WORD2VEC算法。我们结合了不同种类的机器学习算法并进行了全面控制的实验。实验和评估后,我们选择最佳性能的检测机学习模型,可以达到高于98%以上的高检测精度。

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