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Malware detection based on evolving clustering method for classification

机译:基于进化聚类的恶意软件分类检测

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Malware is a computer program that can replicate itself and cause potential damage in data files. The high speed of the computers and networks increased the virus spread. To avoid the virus infection and the data loss, it is important to use an efficient and effective method for virus detection. This paper proposes an approach for malware detection based on the evolving clustering method. The proposed approach effectively combined the information gain method as a feature selector with the evolving clustering method as evolving learning classifier. Based on the experimental results, the proposed malware detection approach proved its capability to detect the malware by decreasing the false positive rate to 1% while increasing the level of accuracy to 99%.
机译:恶意软件是一种计算机程序,可以自我复制并在数据文件中造成潜在的损坏。计算机和网络的高速运行增加了病毒的传播。为了避免病毒感染和数据丢失,使用有效的病毒检测方法非常重要。本文提出了一种基于进化聚类方法的恶意软件检测方法。所提出的方法有效地将信息获取方法作为特征选择器与进化聚类方法作为进化学习分类器相结合。根据实验结果,提出的恶意软件检测方法通过将误报率降低到1%,同时将准确度提高到99%,证明了其检测恶意软件的能力。

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