DocumentCode :
3369287
Title :
FENOC: An Ensemble One-Class Learning Framework for Malware Detection
Author :
Jiachen Liu ; Jianfeng Song ; Qiguang Miao ; Ying Cao
Author_Institution :
Sch. of Comput. Sci. & Technol., Xidian Univ., Xi´an, China
fYear :
2013
fDate :
14-15 Dec. 2013
Firstpage :
523
Lastpage :
527
Abstract :
Nowadays, machine learning based methods are among the most popular ones for malware detection. However, most of the previous works use a single type of features, dynamic or static, and take them to build a binary classification model. These methods have limited ability to depict characteristic malware behaviors and suffer from insufficiently sampled benign samples and extremely imbalanced training dataset. In this paper, we present FENOC, an ensemble one-class learning framework for malware detection. FENOC uses hybrid features from multiple semantic layers to ensure comprehensive insights of analyzed programs, and constructs detection model via CosTOC (Cost-sensitive Twin One-class Classifier), a novel one-class learning algorithm, which uses a pair of one-class classifiers to describe malware class and benign program class respectively. CosTOC is more flexible and robust when handling malware detection problems, which is imbalanced and need low false positive rate. Meanwhile, a random subspace ensemble method is used to enhance the generalization ability of CosTOC. Experimental results show that to detect unknown malware, FENOC has a higher detection rate and a lower false positive rate, especially in the situations that training datasets are imbalanced.
Keywords :
invasive software; learning (artificial intelligence); pattern classification; CosTOC generalization ability enhancement; FENOC; benign program class; binary classification model; cost-sensitive twin one-class classifier; ensemble one-class learning framework; imbalanced training dataset; machine learning based methods; malware behavior characteristic depiction; malware class; malware detection problems; multiple semantic layers; random subspace ensemble method; Classification algorithms; Data collection; Feature extraction; Malware; Software; Training; Training data; ensemble learning; malware detection; malware feature; one-class classification;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computational Intelligence and Security (CIS), 2013 9th International Conference on
Conference_Location :
Leshan
Print_ISBN :
978-1-4799-2548-3
Type :
conf
DOI :
10.1109/CIS.2013.116
Filename :
6746484
Link To Document :
بازگشت