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Malware Detection Based on Structural and Behavioural Features of API Calls

Authors :
Alazab, Manoun
Alazab, Manoun
Layton, Robert
Venkataraman, Sitalakshmi
Watters, Paul
Alazab, Manoun
Alazab, Manoun
Layton, Robert
Venkataraman, Sitalakshmi
Watters, Paul
Source :
International Cyber Resilience conference
Publication Year :
2010

Abstract

In this paper, we propose a five-step approach to detect obfuscated malware by investigating the structural and behavioural features of API calls. We have developed a fully automated system to disassemble and extract API call features effectively from executables. Using n-gram statistical analysis of binary content, we are able to classify if an executable file is malicious or benign. Our experimental results with a dataset of 242 malwares and 72 benign files have shown a promising accuracy of 96.5% for the unigram model. We also provide a preliminary analysis by our approach using support vector machine (SVM) and by varying n-values from 1 to 5, we have analysed the performance that include accuracy, false positives and false negatives. By applying SVM, we propose to train the classifier and derive an optimum n-gram model for detecting both known and unknown malware efficiently.

Details

Database :
OAIster
Journal :
International Cyber Resilience conference
Notes :
application/pdf, International Cyber Resilience conference
Publication Type :
Electronic Resource
Accession number :
edsoai.ocn700353722
Document Type :
Electronic Resource