@inproceedings{a25077f9c4ce4934825c9e8e185b9d8b,
title = "Irregular grid-based clustering over high-dimensional data streams",
abstract = "Clustering high-dimensional data stream is a difficult and important problem. Grid-based algorithms are easily influenced by the size and borders of the grid. To overcome the weakness, we propose a new Irregualr Grid-based Clustering algorithm for high-dimensional data streams, called IGDCL. This method incorporates an irregular grid structure and subspace clustering algorithm. In this paper, an irregular grid structure is generated by means of splitting each dimension into different grid cells. With new data arriving, the irregular grid structure is dynamically adjusted. We assign a fading density function for each data point to embody the evolution of data streams. The final clusters are obtained in subspaces which are formed by dimensions associated with corresponding clusters. Experimental results demonstrate that IGDCL has higher clustering quality than CluStream.",
keywords = "Clustering, High dimensional data stream, Irregular grid",
author = "Hou, {Gui Bin} and Yao, {Rui Xia} and Ren, {Jia Dong} and Hu, {Chang Zhen}",
year = "2010",
doi = "10.1109/PCSPA.2010.195",
language = "English",
isbn = "9780769541808",
series = "Proceedings - 2010 1st International Conference on Pervasive Computing, Signal Processing and Applications, PCSPA 2010",
pages = "783--786",
booktitle = "Proceedings - 2010 1st International Conference on Pervasive Computing, Signal Processing and Applications, PCSPA 2010",
note = "1st International Conference on Pervasive Computing, Signal Processing and Applications, PCSPA 2010 ; Conference date: 17-09-2010 Through 19-09-2010",
}