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A Chronological Evaluation of Unknown Malcode Detection

机译:不知名的Malcode检测的时间评估

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Signature-based anti-viruses are very accurate, but are limited in detecting new malicious code. Dozens of new malicious codes are created every day, and the rate is expected to increase in coming years. To extend the generalization to detect unknown malicious code, heuristic methods are used; however, these are not successful enough. Recently, classification algorithms were used successfully for the detection of unknown malicious code. In this paper we describe the methodology of detection of malicious code based on static analysis and a chronological evaluation, in which a classifier is trained on files till year k and tested on the following years. The evaluation was performed in two setups, in which the percentage of the malicious files in the training set was 50% and 16%. Using 16% malicious files in the training set for some classifiers showed a trend, in which the performance improves as the training set is more updated.
机译:基于签名的防病毒非常准确,但受到检测到新的恶意代码的限制。每天创建几十个新的恶意代码,预计未来几年的速度将增加。要扩展概括以检测未知的恶意代码,使用启发式方法;但是,这些并不足够成功。最近,分类算法被成功用于检测未知恶意代码。在本文中,我们描述了基于静态分析的恶意代码检测方法,以及按时间顺序评估,其中分类器在文件上培训,直到k k并在接下来进行测试。评估是在两个设置中进行的,其中培训集中恶意文件的百分比为50%和16%。在为某些分类器中使用16%的恶意文件,一些分类器显示了一种趋势,其中表现随着训练集的更新而改善。

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