Virus detection using data mining techinques

Jau-Hwang Wang, P. Deng, Yi-Shen Fan, L. Jaw, Yu-Ching Liu
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引用次数: 70

Abstract

Malicious executables are computer programs, which may cause damages or inconveniences for computer users when they are executed. Virus is one of the major kinds of malicious programs, which attach themselves to others and usually get executed before the host programs. They can be easily planted into computer systems by hackers, or simply down loaded and executed by naive users while they are browsing the Web or reading e-mails. They often damage its host computer system, such as destroying data and spoiling system software when they are executed. Thus, to detect computer viruses before they get executed is a very important issue. Current detection methods are mainly based on pattern scanning algorithms. However, they are unable to detect unknown viruses. An automatic heuristic method to detect unknown computer virus based on data mining techniques, namely decision tree and naive Bayesian network algorithms, is proposed and experiments are carried to evaluate the effectiveness the proposed approach.
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使用数据挖掘技术进行病毒检测
恶意可执行程序是指在执行时可能对计算机用户造成损害或不便的计算机程序。病毒是恶意程序的主要类型之一,它附着在其他程序上,通常在宿主程序之前执行。它们很容易被黑客植入计算机系统,或者被天真的用户在浏览网页或阅读电子邮件时下载并执行。它们经常破坏主机系统,例如在执行时破坏数据和破坏系统软件。因此,在计算机病毒执行之前检测它们是一个非常重要的问题。目前的检测方法主要基于模式扫描算法。但是,它们无法检测未知的病毒。提出了一种基于数据挖掘技术即决策树和朴素贝叶斯网络算法的计算机未知病毒自动启发式检测方法,并通过实验验证了该方法的有效性。
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