计算机科学 ›› 2016, Vol. 43 ›› Issue (6): 229-232.doi: 10.11896/j.issn.1002-137X.2016.06.046
谢川
XIE Chuan
摘要: 大数据聚类过程是一个随机的非线性处理过程,具有很高的不确定性。 由于传统方法需要先验知识进行学习,不能很好地适应大数据的实时变化情况,无法有效实现大数据聚类,因此提出一种基于混沌关联特征提取的大数据聚类算法。分析了传统方法的弊端,通过重构相空间建立了一个多维的状态空间向量与混沌轨迹,使原系统中很多几何特征量保持不变,为分析原系统的混沌特征提供有效依据。将平均互信息量取第一个最小值时的横坐标所指的时间延迟作为重构相空间的最佳时间延迟,采用虚假最近邻点算法对最佳嵌入维数进行选择。将提取的关联维数这一特征量作为大数据聚类的混沌特征量,依据提取的混沌关联维特征对大数据进行聚类。仿真实验表明,所提算法能够有效提高数据的聚类效率,减少能耗,是一种有效的数据聚类方法。
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