- Title
- Zero-day malware detection based on supervised learning algorithms of API call signatures
- Creator
- Alazab, Mamoun; Venkatraman, Sitalakshmi; Watters, Paul; Alazab, Moutaz
- Date
- 2011
- Type
- Text; Conference proceedings
- Identifier
- http://researchonline.federation.edu.au/vital/access/HandleResolver/1959.17/69640
- Identifier
- vital:4828
- Identifier
- http://www.scopus.com/inward/record.url?eid=2-s2.0-84870509534&partnerID=40&md5=d2a4ad4ce80c22ccad57088646dbd6e4
- Abstract
- Zero-day or unknown malware are created using code obfuscation techniques that can modify the parent code to produce offspring copies which have the same functionality but with different signatures. Current techniques reported in literature lack the capability of detecting zero-day malware with the required accuracy and efficiency. In this paper, we have proposed and evaluated a novel method of employing several data mining techniques to detect and classify zero-day malware with high levels of accuracy and efficiency based on the frequency of Windows API calls. This paper describes the methodology employed for the collection of large data sets to train the classifiers, and analyses the performance results of the various data mining algorithms adopted for the study using a fully automated tool developed in this research to conduct the various experimental investigations and evaluation. Through the performance results of these algorithms from our experimental analysis, we are able to evaluate and discuss the advantages of one data mining algorithm over the other for accurately detecting zero-day malware successfully. The data mining framework employed in this research learns through analysing the behavior of existing malicious and benign codes in large datasets. We have employed robust classifiers, namely Naïve Bayes (NB) Algorithm, k-Nearest Neighbor (kNN) Algorithm, Sequential Minimal Optimization (SMO) Algorithm with 4 differents kernels (SMO - Normalized PolyKernel, SMO - PolyKernel, SMO - Puk, and SMO- Radial Basis Function (RBF)), Backpropagation Neural Networks Algorithm, and J48 decision tree and have evaluated their performance. Overall, the automated data mining system implemented for this study has achieved high true positive (TP) rate of more than 98.5%, and low false positive (FP) rate of less than 0.025, which has not been achieved in literature so far. This is much higher than the required commercial acceptance level indicating that our novel technique is a major leap forward in detecting zero-day malware. This paper also offers future directions for researchers in exploring different aspects of obfuscations that are affecting the IT world today. © 2011, Australian Computer Society, Inc.
- Publisher
- Ballarat, VIC Australian Computer Society, Inc
- Rights
- Copyright 2011 Australian Computer Society, Inc
- Rights
- Open Access
- Rights
- This metadata is freely available under a CCO license
- Subject
- API calls; Automated data mining; Automated tools; Back propagation neural networks; Code obfuscation; Data mining algorithm; Data mining frameworks; Data mining techniques; Experimental analysis; Experimental investigations; K nearest neighbor algorithm; Malware detection; Obfuscation; Radial basis functions; Sequential minimal optimization algorithms; Computer crime; Information technology; Intrusion detection; Learning algorithms; Neural networks; Optimization; Radial basis function networks; Data mining
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