Title :
A structural and content-based approach for a precise and robust detection of malicious PDF files
Author :
Davide Maiorca;Davide Ariu;Igino Corona;Giorgio Giacinto
Author_Institution :
Department of Electrical and Electronic Engineering, University of Cagliari, Cagliari, Italy
Abstract :
During the past years, malicious PDF files have become a serious threat for the security of modern computer systems. They are characterized by a complex structure and their variety is considerably high. Several solutions have been academically developed to mitigate such attacks. However, they leveraged on information that were extracted from either only the structure or the content of the PDF file. This creates problems when trying to detect non-Javascript or targeted attacks. In this paper, we present a novel machine learning system for the automatic detection of malicious PDF documents. It extracts information from both the structure and the content of the PDF file, and it features an advanced parsing mechanism. In this way, it is possible to detect a wide variety of attacks, including non-Javascript and parsing-based ones. Moreover, with a careful choice of the learning algorithm, our approach provides a significantly higher accuracy compared to other static analysis techniques, especially in the presence of adversarial malware manipulation.
Keywords :
"Portable document format","Feature extraction","Malware","Data mining","Security","Training","Robustness"
Conference_Titel :
Information Systems Security and Privacy (ICISSP), 2015 International Conference on