Detection of malicious webmail attachments based on propagation patterns

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Email remains one of the key media used by cybercriminals for distributing malware. Based on a large data set consisting of antivirus telemetry reports, we conduct the first comprehensive study of the properties of malicious webmail attachments. We show that they are distinct among the general web-borne malware population in terms of the malware reach (the number of machines to which the malware is downloaded), malware type and family. Furthermore, we show that malicious webmail attachments are unique in the manner in which they propagate through the network.We leverage these findings for defining novel features of malware propagation patterns. These features are derived from a time-series representation of malware download rates and from the community structure of graphs that model the network paths through which malware propagates. Based on these features, we implement a detector that provides high-quality detection of malicious webmail attachments.

论文关键词:Malware,Time series analysis,Community detection,Early detection,Service provider

论文评审过程:Received 3 September 2017, Revised 8 November 2017, Accepted 10 November 2017, Available online 11 November 2017, Version of Record 19 December 2017.

论文官网地址:https://doi.org/10.1016/j.knosys.2017.11.011