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Improving the detection accuracy of unknown malware by partitioning the executables in groups

22 June 2016
Ashu Sharma
S. K. Sahay
Abhishek Kumar
ArXiv (abs)PDFHTML
Abstract

Detection of unknown malware with high accuracy is always a challenging task. Therefore, in this paper, we study the classification of unknown malware by two methods. In the first/regular method, similar to other authors [17][16][20] approaches we select the features by taking all dataset in one group and in the second method, we select the features by partitioning the dataset in the range of file 5 KB size. We find that the second method to detect the malware with ~8.7% more accurate than the first/regular method.

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