Zongxing Xie, Thiago Quirino, M. Shyu, Shu‐Ching Chen, LiWu Chang
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引用次数: 12
摘要
开发有效的分类技术,特别是无监督分类,对于现实世界的应用非常重要,因为在分类之前关于训练数据的信息相对未知。为了满足网络入侵检测领域日益增长的需求,本文提出了一种新的无监督分类算法。我们提出的UNPCC(无监督主成分分类器)算法是一种多类无监督分类器,绝对不需要任何先验类相关的数据信息(例如,类的数量和属于每个类的最大实例数),是一种固有的自然监督分类方案,两者都具有高检测率和几个操作优势(例如,更短的训练时间,更短的分类时间,更短的分类时间,更短的分类时间)。更低的处理能力需求和更低的内存需求)。利用KDD Cup 99数据和我们的专用网络测试平台模拟的网络流量数据进行了实验,结果表明,我们的UNPCC算法优于几种知名的监督和无监督分类算法
UNPCC: A Novel Unsupervised Classification Scheme for Network Intrusion Detection
The development of effective classification techniques, particularly unsupervised classification, is important for real-world applications since information about the training data before classification is relatively unknown. In this paper, a novel unsupervised classification algorithm is proposed to meet the increasing demand in the domain of network intrusion detection. Our proposed UNPCC (unsupervised principal component classifier) algorithm is a multiclass unsupervised classifier with absolutely no requirements for any a priori class related data information (e.g., the number of classes and the maximum number of instances belonging to each class), and an inherently natural supervised classification scheme, both which present high detection rates and several operational advantages (e.g., lower training time, lower classification time, lower processing power requirement, and lower memory requirement). Experiments have been conducted with the KDD Cup 99 data and network traffic data simulated from our private network testbed, and the promising results demonstrate that our UNPCC algorithm outperforms several well-known supervised and unsupervised classification algorithms