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   A Data Mining Classification Approach for Behavioral Malware Detection  
   
نویسنده norouzi m. ,souri a. ,samad zamini m.
منبع journal of computer networks and communications - 2016 - دوره : 2016 - شماره : 0
چکیده    Data mining techniques have numerous applications in malware detection. classification method is one of the most popular data mining techniques. in this paper we present a data mining classification approach to detect malware behavior. we proposed different classification methods in order to detect malware based on the feature and behavior of each malware. a dynamic analysis method has been presented for identifying the malware features. a suggested program has been presented for converting a malware behavior executive history xml file to a suitable weka tool input. to illustrate the performance efficiency as well as training data and test,we apply the proposed approaches to a real case study data set using weka tool. the evaluation results demonstrated the availability of the proposed data mining approach. also our proposed data mining approach is more efficient for detecting malware and behavioral classification of malware can be useful to detect malware in a behavioral antivirus. © 2016 monire norouzi et al.
آدرس young researchers and elite club,islamic azad university,hadishahr branch,hadishahr, ایران, department of computer engineering,islamic azad university,hadishahr branch,hadishahr, ایران, department of computer engineering,islamic azad university,sardroud branch,sardroud, ایران
 
     
   
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