Clustering algorithm based on optimal intervals division for high-dimension data streams

Yinzhao Li, Jiadong Ren, Changzhen Hu, Li-Na Xu
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Abstract

Clustering for high-dimension data streams is a main focus in the field of clustering research. In order to optimize the clustering process, especially for the large number of candidate subspaces generated in it, optimal segmentation section technology and FP-tree structure are introduced, based on which, DOIC (Dynamic optimal intervals-based cluster) algorithm is proposed. In this paper, the memory-based data partition and optimal intervals division are defined to generate high-density grids for each dimension, which are stored in a High-Density Unit tree (HDU). The HDU-tree is built according to the principle that high-density grids for the same interval in every dimension are stored in the same branch. Thus the process of clustering high-dimension data streams is transformed into that of searching for dense grids in the HDU-tree. By merging HDU-trees, new data streams is inserted and historical data streams is decayed, then the updating of data streams is achieved. The clustering result is returned in the form of DNF expressions timely as requests. The experimental results demonstrate that DOIC has better space scalability and higher clustering quality compared with traditional clustering algorithms.
基于最优区间划分的高维数据流聚类算法
高维数据流的聚类是聚类研究领域的一个主要热点。为了优化聚类过程,特别是针对其中产生的大量候选子空间,引入了最优分割截面技术和FP-tree结构,在此基础上提出了DOIC (Dynamic optimal intervals-based clustering)算法。本文定义了基于内存的数据划分和最优区间划分方法,对每个维度生成高密度网格,存储在高密度单元树(HDU)中。hdu树是根据在同一分支中存储每个维度相同间隔的高密度网格的原则构建的。从而将高维数据流的聚类过程转化为在hdu树中搜索密集网格的过程。通过合并hdu树,插入新的数据流,对历史数据流进行衰减,从而实现数据流的更新。聚类结果会根据请求及时以DNF表达式的形式返回。实验结果表明,与传统聚类算法相比,DOIC具有更好的空间可扩展性和更高的聚类质量。
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