Title
Dynamic malware detection and phylogeny analysis using process mining
Abstract
In the last years, mobile phones have become essential communication and productivity tools used daily to access business services and exchange sensitive data. Consequently, they also have become one of the biggest targets of malware attacks. New malware is created everyday, most of which is generated as variants of existing malware by reusing its malicious code. This paper proposes an approach for malware detection and phylogeny studying based on dynamic analysis using process mining. The approach exploits process mining techniques to identify relationships and recurring execution patterns in the system call traces gathered from a mobile application in order to characterize its behavior. The recovered characterization is expressed in terms of a set of declarative constraints between system calls and represents a sort of run-time fingerprint of the application. The comparison between the so defined fingerprint of a given application with those of known malware is used to verify: (1) if the application is malware or trusted, (2) in case of malware, which family it belongs to, and (3) how it differs from other known variants of the same malware family. An empirical study conducted on a dataset of 1200 trusted and malicious applications across ten malware families has shown that the approach exhibits a very good discrimination ability that can be exploited for malware detection and malware evolution studying. Moreover, the study has also shown that the approach is robust to code obfuscation techniques increasingly being used by nowadays malware.
Year
DOI
Venue
2019
10.1007/s10207-018-0415-3
International Journal of Information Security
Keywords
Field
DocType
Malware detection,Malware evolution,Malware phylogeny,Security,Process mining,Linear temporal logic,Declare
Data mining,Computer security,Computer science,sort,Linear temporal logic,Exploit,Fingerprint,System call,Obfuscation (software),Malware,Process mining
Journal
Volume
Issue
ISSN
18
3
1615-5270
Citations 
PageRank 
References 
2
0.38
35
Authors
5
Name
Order
Citations
PageRank
Mario Luca Bernardi115629.89
Marta Cimitile218324.34
Damiano Distante329530.04
Fabio Martinelli475182.27
Francesco Mercaldo531950.25