基于集成的恶意软件检测分类与自适应模型

M. N. A. Zabidi, M. A. Maarof, A. Zainal
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引用次数: 6

摘要

恶意软件,这个词来源于两个词;恶意软件给全世界的计算机用户带来了许多问题。以前被称为许多名字;特洛伊木马、病毒、蠕虫、拨号器和许多其他潜在的不需要的软件只是被标记为恶意软件。恶意软件是一种软件,它可以像任何其他优秀的软件一样工作,但被设计成实现其作者的目标。它的编写是为了利用目标受害者的操作系统或应用程序的漏洞。以前是一个原始的和容易检测的,它演变成一个复杂的和专业编写的软件。目前的恶意软件检测方法主要是基于模式检测的字符串搜索算法。这可能包括使用基于签名的方法。本文提出了一种集成分类、聚类和自适应学习模型相结合的集成分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble based categorization and adaptive model for malware detection
Malware, a term which was derived from two words; malicious software has caused many problem to the computer users throughout the world. Previously was known as many names; trojan, virus, worms, dialers and many others, thid potientially unwanted software simply labeled as malware. Malware is a software, which works as any other benigh software, but was designed to accomplish the goal of its writers. It was written to exploit the vulnerability of the target victim's operating system or application. Previously was a primitive and easy to detect, it evolves to a sophisticated and professionally written piece of software. Current malware detection method involved string search algorithm which based on the pattern detection. This may include the use of signature based method. In this paper, we propose an ensemble categorization by using ensemble classification and clustering together with adaptive learning model.
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