Title :
DC-Tree: Density-Based Clustering Index for Objects in Skewed Distribution
Author :
Tang, Jine ; Li, Dandan ; Zhou, Zhangbing ; Shu, Lei ; Zhang, Daqiang ; Wang, Qun
Author_Institution :
China Univ. of Geosci. (Beijing), Beijing, China
Abstract :
Efficient spatial index is essential for querying data objects in spatial databases. Data objects may be unevenly distributed in real situations. In this setting, R-tree and its variants may cause large overlap and coverage among branch nodes, which impact the query efficiency to some extent. To address this challenge, this paper proposes a novel Density-based Clustering tree (DC-tree) by clustering data objects. Data objects in a dense region will be put into the same node. Thus, overlap and coverage among node regions are less than that of R-tree and its variants. Since dense regions contain more data objects, we assign a higher priority to these region nodes for facilitating the query operation. Experimental results show that in the context of skewed distribution, DC-tree can have a better performance for the insertion, deletion and query operations than that of traditional R-tree.
Keywords :
pattern clustering; query processing; tree data structures; visual databases; DC-tree; R-tree; density-based clustering index; querying data objects; skewed distribution; spatial databases; spatial index; Clustering algorithms; Context; Educational institutions; Indexing; Spatial databases; Spatial indexes;
Conference_Titel :
Enabling Technologies: Infrastructure for Collaborative Enterprises (WETICE), 2012 IEEE 21st International Workshop on
Conference_Location :
Toulouse
Print_ISBN :
978-1-4673-1888-4
DOI :
10.1109/WETICE.2012.27