异常流量监测的协同关联空间大数据聚类算法

Ting Fu, Hong Chen, Fei Wu, Yuxin Su, L. Zhuang
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引用次数: 0

摘要

大数据聚类过程是一个具有高度不确定性的随机非线性过程。由于传统方法需要先验知识来学习,不能很好地适应大数据的实时变化,不能有效地实现大数据聚类。良好的集群结构可以减少冗余,优化网络资源配置,减少节点开销,实现网络均衡。协同关联空间是模拟模型形成空间分析和过程仿真的有力工具。为此,为了提高大数据的快速处理和识别能力,提出了一种面向聚类网络的协同关联空间大数据。仿真实验表明,将该算法用于大数据聚类,可以有效提高数据聚类效率,降低能耗,具有较好的抗干扰性和适应性,具有较高的聚类精度。在流量异常检测实验中,结果表明本文提出的方法比均值和决策树算法具有更高的流量异常识别精度,且调用率最大。
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Retracted Article: Collaborative correlation space big data clustering algorithm for abnormal flow monitoring
The big data clustering process is a random nonlinear process with high uncertainty. Because traditional methods require prior knowledge to learn, they cannot adapt well to the real-time changes of big data, and cannot effectively achieve big data clustering. A good clustering structure can reduce redundancy, optimize network resource configuration, and reduce node overhead and balance the network. The collaborative correlation space is a powerful tool that will simulate the model to form a spatial analysis and process simulation. Therefore, in order to improve the fast processing and recognition ability of big data, a collaborative correlation spatial big data oriented to clustering network is proposed. Simulation experiments show that using this algorithm for big data clustering can effectively improve the data clustering efficiency, reduce energy consumption, has better anti-interference and adaptability, and has higher clustering accuracy. In the flow anomalydetectionexperiment,resultsshowthatthemethodproposedinthispaperhashighertrafficanomaly identificationaccuracythank-meansanddecisiontreealgorithm,andtherecallrateandROCareaarethelargest.
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来源期刊
International Journal of Computers and Applications
International Journal of Computers and Applications Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
4.70
自引率
0.00%
发文量
20
期刊介绍: The International Journal of Computers and Applications (IJCA) is a unique platform for publishing novel ideas, research outcomes and fundamental advances in all aspects of Computer Science, Computer Engineering, and Computer Applications. This is a peer-reviewed international journal with a vision to provide the academic and industrial community a platform for presenting original research ideas and applications. IJCA welcomes four special types of papers in addition to the regular research papers within its scope: (a) Papers for which all results could be easily reproducible. For such papers, the authors will be asked to upload "instructions for reproduction'''', possibly with the source codes or stable URLs (from where the codes could be downloaded). (b) Papers with negative results. For such papers, the experimental setting and negative results must be presented in detail. Also, why the negative results are important for the research community must be explained clearly. The rationale behind this kind of paper is that this would help researchers choose the correct approaches to solve problems and avoid the (already worked out) failed approaches. (c) Detailed report, case study and literature review articles about innovative software / hardware, new technology, high impact computer applications and future development with sufficient background and subject coverage. (d) Special issue papers focussing on a particular theme with significant importance or papers selected from a relevant conference with sufficient improvement and new material to differentiate from the papers published in a conference proceedings.
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