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Malicious PDF Detection Model against Adversarial Attack Built from Benign PDF Containing JavaScriptopen access

Authors
Kang, Ah ReumJeong, Young-SeobKim, Se LyeongWoo, Jiyoung
Issue Date
2-Nov-2019
Publisher
MDPI
Keywords
malicious PDF; malware; detection; machine-learning; adversarial attack
Citation
Applied Sciences-basel, v.9, no.22
Journal Title
Applied Sciences-basel
Volume
9
Number
22
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/4084
DOI
10.3390/app9224764
ISSN
2076-3417
Abstract
Intelligent attacks using document-based malware that exploit vulnerabilities in document viewing software programs or document file structure are increasing rapidly. There are many cases of using PDF (portable document format) in proportion to its usage. We provide in-depth analysis on PDF structure and JavaScript content embedded in PDFs. Then, we develop the diverse feature set encompassing the structure and metadata such as file size, version, encoding method and keywords, and the content features such as object names, keywords, and readable strings in JavaScript. When features are diverse, it is hard to develop adversarial examples because small changes are robust for machine-learning algorithms. We develop a detection model using black-box type models with the structure and content features to minimize the risk of adversarial attacks. To validate the proposed model, we design the adversarial attack. We collect benign documents containing multiple JavaScript codes for the base of adversarial samples. We build the adversarial samples by injecting the malware codes into base samples. The proposed model is evaluated against a large collection of malicious and benign PDFs. We found that random forest, an ensemble algorithm of a decision tree, exhibits a good performance on malware detection and is robust for adversarial samples.
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SCH Media Labs > Department of Big Data Engineering > 1. Journal Articles
SCH Media Labs > SCH미디어랩스_SCH융합과학연구소 > 1. Journal Articles

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