Malware family labels are known to be inconsistent. They are also black-box since they do not represent the capabilities of malware. The current state of the art in malware capability assessment includes mostly manual approaches, which are infeasible due to the ever-increasing volume of discovered malware samples. We propose a novel unsupervised machine learning-based method called MalPaCA, which automates capability assessment by clustering the temporal behavior in malware's network traces. MalPaCA provides meaningful behavioral clusters using only 20 packet headers. Behavioral profiles are generated based on the cluster membership of malware's network traces. A Directed Acyclic Graph shows the relationship between malwares according to th...
In this article we use machine activity metrics to automatically distinguish between malicious and t...
We identify a new method for detecting malware within a network that can be processed in linear time...
We identify a new method for detecting malware within a network that can be processed in linear time...
Malware family labels are known to be inconsistent. They are also black box since they do not repres...
Developing malware variants is extremely cheap for attackers because of the availability of various ...
Anti-malware companies receive thousands of malware samples every day. To process this large quantit...
MalPaCA makes use of unsupervised machine learning to provide malware capability assessment by clust...
Abstract. The ever-increasing number of malware families and polymorphic variants creates a pressing...
The ever-increasing number of malware families and polymorphic variants creates a pressing need for ...
Malware undoubtedly have become a major threat in modern society and their numbers are growing daily...
The skyrocketing growth rate of new malware brings novel challenges to protect computers and network...
Anti-malware vendors receive several thousand new malware (malicious software) variants per day. Due...
Anti-malware vendors receive several thousand new malware (malicious software) variants per day. Due...
In this article we use machine activity metrics to automatically distinguish between malicious and t...
In this article we use machine activity metrics to automatically distinguish between malicious and t...
In this article we use machine activity metrics to automatically distinguish between malicious and t...
We identify a new method for detecting malware within a network that can be processed in linear time...
We identify a new method for detecting malware within a network that can be processed in linear time...
Malware family labels are known to be inconsistent. They are also black box since they do not repres...
Developing malware variants is extremely cheap for attackers because of the availability of various ...
Anti-malware companies receive thousands of malware samples every day. To process this large quantit...
MalPaCA makes use of unsupervised machine learning to provide malware capability assessment by clust...
Abstract. The ever-increasing number of malware families and polymorphic variants creates a pressing...
The ever-increasing number of malware families and polymorphic variants creates a pressing need for ...
Malware undoubtedly have become a major threat in modern society and their numbers are growing daily...
The skyrocketing growth rate of new malware brings novel challenges to protect computers and network...
Anti-malware vendors receive several thousand new malware (malicious software) variants per day. Due...
Anti-malware vendors receive several thousand new malware (malicious software) variants per day. Due...
In this article we use machine activity metrics to automatically distinguish between malicious and t...
In this article we use machine activity metrics to automatically distinguish between malicious and t...
In this article we use machine activity metrics to automatically distinguish between malicious and t...
We identify a new method for detecting malware within a network that can be processed in linear time...
We identify a new method for detecting malware within a network that can be processed in linear time...