English

Artificial Intelligence Based Malware Analysis

Cryptography and Security 2017-05-01 v1 Artificial Intelligence

Abstract

Artificial intelligence methods have often been applied to perform specific functions or tasks in the cyber-defense realm. However, as adversary methods become more complex and difficult to divine, piecemeal efforts to understand cyber-attacks, and malware-based attacks in particular, are not providing sufficient means for malware analysts to understand the past, present and future characteristics of malware. In this paper, we present the Malware Analysis and Attributed using Genetic Information (MAAGI) system. The underlying idea behind the MAAGI system is that there are strong similarities between malware behavior and biological organism behavior, and applying biologically inspired methods to corpora of malware can help analysts better understand the ecosystem of malware attacks. Due to the sophistication of the malware and the analysis, the MAAGI system relies heavily on artificial intelligence techniques to provide this capability. It has already yielded promising results over its development life, and will hopefully inspire more integration between the artificial intelligence and cyber--defense communities.

Keywords

Cite

@article{arxiv.1704.08716,
  title  = {Artificial Intelligence Based Malware Analysis},
  author = {Avi Pfeffer and Brian Ruttenberg and Lee Kellogg and Michael Howard and Catherine Call and Alison O'Connor and Glenn Takata and Scott Neal Reilly and Terry Patten and Jason Taylor and Robert Hall and Arun Lakhotia and Craig Miles and Dan Scofield and Jared Frank},
  journal= {arXiv preprint arXiv:1704.08716},
  year   = {2017}
}
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