機械学習の手法を用いたメタデータによるマルウェアの高速な分類方法

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タイトル別名
  • An approach to fast malware classification based on malware's meta-data using machine learning technique

説明

With the rapid increase in malware, it is important for malware analysis that classifying unknown malware files into malware families to characterize the type of behavior and static malware characteristic accuracy. In this paper we introduce an approach to fast malware classification based on malware's file meta-data. We used a machine learning technique called decision tree algorithm to classify malware rapidly and correctly. Experimental results with the malware samples show that our system successfully determined some semantic similarity between malware and showed their inner similarity in behavior and static malware characteristic.

With the rapid increase in malware, it is important for malware analysis that classifying unknown malware files into malware families to characterize the type of behavior and static malware characteristic accuracy. In this paper we introduce an approach to fast malware classification based on malware's file meta-data. We used a machine learning technique called decision tree algorithm to classify malware rapidly and correctly. Experimental results with the malware samples show that our system successfully determined some semantic similarity between malware and showed their inner similarity in behavior and static malware characteristic.

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