Malicious Software Detection based on URL-API Intensity Feature Selection Using Deep Spectral Neural Classification for Improving Host Security

B. Lavanya, C. Shanthi
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Abstract

In recent years, the internet of services has been more responsive to access through the development of various application program interfaces (API). Accessing an HTTP uniform resource locator (URL) contains malicious software intended by the attacker to create security breaches through the use of APIs from various services on the internet. By default, the non-attentive URL downloads and installs malware in the background without the user’s knowledge. The host does not analyze the API-URL security certificate contract due to the feature access by the user. Therefore, the current Machine Learning (ML) techniques only check malware signatures and certificates rather than analyzing URL behaviour based on the impact of a URL accessed from the internet. To address this problem, we propose a novel intelligent malicious software based on URL-API intensity feature selection (IFS) and deep spectral neural classification (DSNC) for improving Host Security. Initially, the URL — successive certificate signing (SCS) of the user link accessibility is verified based on API download rate logs. This system identifies the best malware software. The Link Redirection Stability Rate (LRSR) is estimated based on the Redirection URL by accessing the direct link and redirect link. The domain transformation matrix (DTM) was created to create a pattern to access successive features. URL-API Intensity Feature Selection selects each estimated feature, and the selected features are based on soft-max logical activation with a recurrent neural network (RNN) optimized for deep learning. RNN is trained in the spectral domain for improving computation and efficiency. It predicts the class based on the risk of malicious weight to categorize class by reference. The proposed IFS-DSNC achieves accuracy of 95.6% than the other algorithms such as KNN, NB, CNN, LCS, GCRNC AGSCR. The experimental result shows that the proposed method provides better performance in finding malware software than the existing approaches, thereby improving the security against host breaching.
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基于深度谱神经分类URL-API强度特征选择的恶意软件检测提高主机安全性
近年来,通过开发各种应用程序编程接口(API),服务的互联网对访问的响应更加灵敏。访问HTTP统一资源定位符(URL)包含攻击者意图通过使用来自internet上各种服务的api来创建安全漏洞的恶意软件。默认情况下,非注意URL在用户不知情的情况下在后台下载并安装恶意软件。由于用户访问特性,主机不分析API-URL安全证书契约。因此,目前的机器学习(ML)技术只检查恶意软件签名和证书,而不是基于从互联网访问的URL的影响来分析URL行为。为了解决这一问题,我们提出了一种基于URL-API强度特征选择(IFS)和深度谱神经分类(DSNC)的智能恶意软件来提高主机安全性。最初,用户链接可访问性的URL -连续证书签名(SCS)是基于API下载速率日志进行验证的。该系统识别出最好的恶意软件。LRSR (Link Redirection Stability Rate)是通过访问直连链路和重定向链路,根据重定向URL来估算的。创建了域转换矩阵(DTM)来创建访问连续特征的模式。URL-API强度特征选择选择每个估计的特征,所选择的特征基于软最大逻辑激活,使用针对深度学习优化的循环神经网络(RNN)。RNN在谱域进行训练,以提高计算能力和效率。它基于恶意权重的风险来预测类,通过引用对类进行分类。与KNN、NB、CNN、LCS、GCRNC、AGSCR等算法相比,本文提出的IFS-DSNC算法的准确率达到95.6%。实验结果表明,该方法比现有方法具有更好的检测恶意软件的性能,从而提高了对主机入侵的安全性。
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