作者
Md Mamunur Rashid, Joarder Kamruzzaman, Mohiuddin Ahmed, Nahina Islam, Santoso Wibowo, Steven Gordon
发表日期
2020/12/16
研讨会论文
2020 IEEE Asia-Pacific Conference on Computer Science and Data Engineering (CSDE)
页码范围
1-5
出版商
IEEE
简介
An intrusion detection system’s (IDS) key role is to recognise anomalous activities from both inside and outside the network system. In literature, many machine learning techniques have been proposed to improve the performance of IDS. To create a good IDS, a single classifier might not be powerful enough. To overcome this bottleneck researchers focus on hybrid/ensemble techniques. Such methods are more complex and computation intensive, but they provide greater accuracy and lower false alarm rates (FAR). In this paper, we propose a bagging ensemble that improves the performance of IDS in terms of accuracy and FAR where the NSL-KDD dataset has been used to classify benign and abnormal traffic. We have also applied the information gain-based feature selection method to select highly relevant features for improving the accuracy of the proposed technique and achieved 84.93 % accuracy and 2.45 …
引用总数
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MM Rashid, J Kamruzzaman, M Ahmed, N Islam… - 2020 IEEE Asia-Pacific Conference on Computer …, 2020