Multi-granularity approach for enhancing the performance of network intrusion detection with supervised learning

V. R. Saraswathy, N. Kasthuri, I. P. Ramyadevi
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引用次数: 1

Abstract

Intrusion detection system (IDS) is essential in order to overcome the security threats in the network community. IDS examines a large number of features in the data set to detect the intrusion. The process of feature selection is required to reduce the time consumption and storage memory. The data set may contain noisy, uncertain and redundant information. Rough Set Theory (RST) is one of the mathematical tool to reduce the features in the dataset. The quick reduct and relative reduct algorithms are hybridized with the Particle Swarm Optimization (PSO)to improve the effectiveness of the feature reduction. Multi-granularity is applied for network dataset and the reduct is obtained. It is observed that the reduct obtained through the multi-granularity approach produces better result in terms of time than the reduct obtained by the direct application of rough set algorithm.
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利用监督学习提高网络入侵检测性能的多粒度方法
入侵检测系统(IDS)是克服网络社区安全威胁的必要手段。IDS检查数据集中的大量特征以检测入侵。特征选择过程需要减少时间消耗和存储空间。数据集可能包含有噪声的、不确定的和冗余的信息。粗糙集理论(RST)是对数据集进行特征约简的数学工具之一。将快速约简和相对约简算法与粒子群算法(PSO)相结合,提高了特征约简的有效性。将多粒度应用于网络数据集,得到约简结果。结果表明,通过多粒度方法得到的约简在时间上优于直接应用粗糙集算法得到的约简。
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