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Detecting malicious behaviour using supervised learning algorithms of the function calls

机译:使用函数调用的监督学习算法检测恶意行为

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This paper describes our research in evaluating the use or supervised data mining algorithms for an effective detection of zero-day malware. Our aim is to design the tasks of certain popular types of supervised data mining algorithms for zero-day malware detection and compare their performance in terms of accuracy and efficiency. In this context, we propose and evaluate a novel method of employing such data mining techniques based on the frequency of Windows function calls. Our experimental investigations using large data sets to train the classifiers with a design tool to compare the performance of various data mining algorithms. Analysis of the results suggests the advantages of one data mining algorithm over the other for malware detection. Overall, data mining algorithms are employed with true positive rate as high as 98.5%, and low false positive rate of less than 0.025, indicating good applicability and future enhancements for detecting unknown and infected files with embedded stealthy malcode.
机译:本文介绍了我们在评估使用或监督数据挖掘算法以有效检测零日恶意软件方面的研究。我们的目的是设计用于零日恶意软件检测的某些流行类型的监督数据挖掘算法的任务,并就准确性和效率进行比较。在这种情况下,我们提出并评估了一种基于Windows函数调用频率的采用这种数据挖掘技术的新颖方法。我们的实验研究使用大数据集来训练带有设计工具的分类器,以比较各种数据挖掘算法的性能。结果分析表明,对于恶意软件检测,一种数据挖掘算法优于另一种数据挖掘算法。总体而言,采用的数据挖掘算法具有高达98.5%的真实阳性率,并且低于0.025的较低的假阳性率,表明具有很好的适用性和未来的增强功能,可以检测到带有嵌入式隐身恶意代码的未知和受感染文件。

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