Malware Detection System Using Cloud Sandbox, Machine Learning

Mohd Azuwan EfendyMail, Mohd Faizal Ab Razak, Munirah Ab. Rahman
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引用次数: 2

Abstract

Today's internet continues to move forward, and with it comes the development of many applications. Therefore, these applications are also directly accessible via the Internet, which makes it one of the important things these days. In addition to this, these applications are sometimes developed as software that can be installed on users computers, laptops and even smartphones, which often attracts many attackers to compromise their computers with malware that is unintentionally installed in the computer. Gadgets and even computer systems. computer background. Many solutions have been employed to detect if these malware are installed. This paper aims to evaluate and study the effectiveness of machine learning methods in detecting and classifying malware being installed. This paper employs heuristics and machine learning classifiers to identify malware attacks detected in each website or software application. The study compares 3 classifiers to find the best machine learning classifier for detecting malware attacks. Prove that the cloud sandbox can achieve a high detection accuracy of 99.8% true positive rate value when identifying malware attacks? Use website features. Results show that Cloud Sandbox is an effective classifier for detecting malware attacks.
使用云沙箱、机器学习的恶意软件检测系统
今天的互联网继续向前发展,随之而来的是许多应用程序的发展。因此,这些应用程序也可以通过Internet直接访问,这使得它成为当今重要的事情之一。除此之外,这些应用程序有时被开发为可以安装在用户计算机、笔记本电脑甚至智能手机上的软件,这通常会吸引许多攻击者使用无意中安装在计算机中的恶意软件来破坏他们的计算机。小工具甚至电脑系统。电脑背景。已经采用了许多解决方案来检测这些恶意软件是否已安装。本文旨在评估和研究机器学习方法在检测和分类已安装的恶意软件方面的有效性。本文采用启发式和机器学习分类器对每个网站或软件应用中检测到的恶意软件攻击进行识别。该研究比较了3种分类器,以找到检测恶意软件攻击的最佳机器学习分类器。证明云沙箱在识别恶意软件攻击时可以达到99.8%真阳性率的高检测准确率?利用网站功能。结果表明,云沙箱是检测恶意软件攻击的有效分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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