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首页> 外文期刊>International Journal of Intelligent Systems >Taylor-HHO algorithm: A hybrid optimization algorithm with deep long short-term for malicious JavaScript detection
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Taylor-HHO algorithm: A hybrid optimization algorithm with deep long short-term for malicious JavaScript detection

机译:Taylor-HHO算法:一种混合优化算法,具有恶意Javacript检测的深度短期

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摘要

The security of information has become a major issue due to the development of network information-based technologies. The malicious script, like, JavaScript, is a major threat to computer networks in terms of network security. Here, the JavaScript allows the programmers not only to build advanced client-side interfaces for web-based applications but also utilized for carrying out attacks that may steal the user's confidential data. In addition, the attackers can easily induce malicious JavaScript into webpages for implanting attacks, like, phishing, spreading viruses, and Trojan horses. This paper devises a novel method, namely, Taylor-Harris Hawks Optimization driven deep long short-term memory (Taylor-HHO-based Deep LSTM) for malicious JavaScript discovery. Initially, the JavaScript is subjected as input to feature extraction in which certain features, such as time of execution, function calls, condition statement, break statement, loop statements, Boolean, number of lines, and number of O(N~2) loops, are extracted. The obtained features are fed to transformation, wherein log transformation is applied for data transformation. The obtained transformed features are fused using information gain and Deep LSTM. Furthermore, the proposed Taylor-HHO-based Deep LSTM is employed for discovering malevolent JavaScript. The proposed Taylor-HHO-based Deep LSTM provided enhanced performance with the highest accuracy of 0.955, minimal FPR of 0.059, and highest TPR of 0.967.
机译:由于网络信息的技术的发展,信息的安全性已成为一个主要问题。类似于javascript的恶意脚本是在网络安全方面对计算机网络的重大威胁。这里,JavaScript允许程序员不仅为基于Web的应用程序构建高级客户端接口,而且还用于执行可能窃取用户机密数据的攻击。此外,攻击者可以轻松地将恶意JavaScript诱导到网页中,以植入攻击,如网络钓鱼,传播病毒和特洛伊木马。本文设计了一种新颖的方法,即Taylor-Harris Hawks优化驱动了深入的短期内存(Taylor-HHO基础LSTM),用于恶意JavaScript发现。最初,JavaScript被视为特征提取的输入,其中某些功能(例如执行时间),函数调用,条件语句,break语句,循环语句,布尔值,行数以及O(n〜2)循环的数量,被提取。所获得的特征被馈送到变换,其中对数据变换应用了日志转换。使用的变换特征使用信息增益和深层LSTM融合。此外,所提出的基于泰勒 - HHO的深LSTM用于发现恶毒的JavaScript。所提出的泰勒 - HHO基础LSTM提供增强的性能,最高精度为0.955,最小FPR为0.059,最高的TPR为0.967。

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