基于数据挖掘的密集型恶意软件检测方法

I. Salem, K. Al-saedi
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引用次数: 0

摘要

恶意软件,有时也称为恶意软件,是一种旨在危害计算机、网络或任何连接资源的软件。在用户不知情的情况下,恶意软件可以在其计算机系统中传播。恶意软件通常通过在线连接和移动设备传播。虽然恶意软件一直是数字时代的一个问题,但其影响却越来越严重。传统的恶意软件检测方法寻求定位特定的恶意软件样本和家族,以识别有害代码,并可使用传统的基于签名和规则的检测方法进行定位。研究重点是利用数据挖掘技术开发恶意软件检测器。下文概述的拟议方法与众不同,它强调对恶意软件行为的处理在很大程度上取决于各个方面。寻找更可靠的智能检测技术是本文的重要组成部分。为了识别最基本的恶意软件特征集群,并使用决策树分类器进行恶意软件检测,我们实施并研究了基于数据挖掘创建恶意软件检测器的通用方法。我们的方法可以识别出恶意软件最重要的特征,这些特征可以显著地判断和检测恶意软件代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intensive Malware Detection Approach based on Data Mining
Malicious software, sometimes known as malware, is software designed to harm a computer, network, or any of the connected resources. Without the user's knowledge, malware can spread throughout their computer system. Malware is typically disseminated via online connections and mobile devices. While malware has always been a problem in the digital age, its effects have gotten increasingly serious. Traditional malware detection methods seek to locate specific malware samples and families to recognize harmful codes and can be located using traditional signature- and rule-based detection methods. The research focuses on developing malware detectors using data mining techniques. The proposed method outlined below sets itself apart by emphasizing the processing of malware behaviors significantly dependent on aspects. Finding more dependable intelligent detecting techniques is a crucial component of this paper. In order to identify the cluster of the most essential malware features and use decision tree classifiers for malware detection, the study, a common methodology for creating malware detectors based on data mining, is implemented and investigated. Our approach can identify the most significant features of malware that can significantly determine and detect a malware code.
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