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首页> 外文期刊>Systems, Man, and Cybernetics, Part C: Applications and Reviews, IEEE Transactions on >CIMDS: Adapting Postprocessing Techniques of Associative Classification for Malware Detection
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CIMDS: Adapting Postprocessing Techniques of Associative Classification for Malware Detection

机译:CIMDS:适应性关联分类的后处理技术,用于恶意软件检测

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摘要

Malware is software designed to infiltrate or damage a computer system without the owner's informed consent (e.g., viruses, backdoors, spyware, trojans, and worms). Nowadays, numerous attacks made by the malware pose a major security threat to computer users. Unfortunately, along with the development of the malware writing techniques, the number of file samples that need to be analyzed, named "gray list," on a daily basis is constantly increasing. In order to help our virus analysts, quickly and efficiently pick out the malicious executables from the "gray list," an automatic and robust tool to analyze and classify the file samples is needed. In our previous work, we have developed an intelligent malware detection system (IMDS) by adopting associative classification method based on the analysis of application programming interface (API) execution calls. Despite its good performance in malware detection, IMDS still faces the following two challenges: (1) handling the large set of the generated rules to build the classifier; and (2) finding effective rules for classifying new file samples. In this paper, we first systematically evaluate the effects of the postprocessing techniques (e.g., rule pruning, rule ranking, and rule selection) of associative classification in malware detection, and then, propose an effective way, i.e., CIDCPF, to detect the malware from the "gray list." To the best of our knowledge, this is the first effort on using postprocessing techniques of associative classification in malware detection. CIDCPF adapts the postprocessing techniques as follows: first applying Chi-square testing and Insignificant rule pruning followed by using Database coverage based on the Chi-square measure rule ranking mechanism and Pessimistic error estimation, and finally performing prediction by selecting the best First rule. We have incorporated the CIDCPF method into our existing IMDS system, and we call the new system as CIMDS system. Case studies are performed on -n-nthe large collection of file samples obtained from the Antivirus Laboratory at Kingsoft Corporation and promising experimental results demonstrate that the efficiency and ability of detecting malware from the "gray list" of our CIMDS system outperform popular antivirus software tools, such as McAfee VirusScan and Norton Antivirus, as well as previous data-mining-based detection systems, which employed Naive Bayes, support vector machine, and decision tree techniques. In particular, our CIMDS system can greatly reduce the number of generated rules, which makes it easy for our virus analysts to identify the useful ones.
机译:恶意软件是设计用于未经所有者事先知情同意而渗透或破坏计算机系统的软件(例如,病毒,后门,间谍软件,特洛伊木马和蠕虫)。如今,该恶意软件所进行的大量攻击对计算机用户构成了主要的安全威胁。不幸的是,随着恶意软件编写技术的发展,每天需要分析的被称为“灰色列表”的文件样本数量正在不断增加。为了帮助病毒分析人员从“灰色列表”中快速有效地挑选出恶意可执行文件,需要一种自动且强大的工具来对文件样本进行分析和分类。在之前的工作中,我们基于对应用程序编程接口(API)执行调用的分析,采用了关联分类方法,从而开发了智能恶意软件检测系统(IMDS)。尽管IMDS在恶意软件检测方面表现出色,但它仍面临以下两个挑战:(1)处理大量生成的规则以构建分类器; (2)找到有效的规则对新文件样本进行分类。在本文中,我们首先系统地评估关联分类的后处理技术(例如规则修剪,规则排名和规则选择)在恶意软件检测中的效果,然后提出一种有效的方法(即CIDCPF)来检测恶意软件来自“灰色列表”。据我们所知,这是在恶意软件检测中使用关联分类的后处理技术的首次尝试。 CIDCPF对后处理技术的适应如下:首先应用卡方检验和微不足道的规则修剪,然后基于卡方度量规则排名机制和悲观错误估计使用数据库覆盖率,最后通过选择最佳的第一条规则进行预测。我们已经将CIDCPF方法合并到我们现有的IMDS系统中,我们将新系统称为CIMDS系统。案例研究是从金山公司防病毒实验室获得的大量文件样本进行的,有希望的实验结果表明,从我们的CIMDS系统“灰色列表”中检测恶意软件的效率和能力优于流行的防病毒软件工具(例如McAfee VirusScan和Norton Antivirus)以及以前的基于数据挖掘的检测系统,这些系统采用了朴素贝叶斯(Naive Bayes),支持向量机和决策树技术。特别是,我们的CIMDS系统可以大大减少所生成规则的数量,这使我们的病毒分析人员可以轻松地识别出有用的规则。

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