DocumentCode
3671913
Title
Distributed clustering algorithm for spatial data mining
Author
Malika Bendechache;M-Tahar Kechadi
Author_Institution
School of Computer Science &
fYear
2015
fDate
7/1/2015 12:00:00 AM
Firstpage
60
Lastpage
65
Abstract
Distributed data mining techniques and mainly distributed clustering are widely used in the last decade because they deal with very large and heterogeneous datasets which cannot be gathered centrally. Current distributed clustering approaches are normally generating global models by aggregating local results that are obtained on each site. While this approach mines the datasets on their locations the aggregation phase is complex, which may produce incorrect and ambiguous global clusters and therefore incorrect knowledge. In this paper we propose a new clustering approach for very large spatial datasets that are heterogeneous and distributed. The approach is based on K-means Algorithm but it generates the number of global clusters dynamically. Moreover, this approach uses an elaborated aggregation phase. The aggregation phase is designed in such a way that the overall process is efficient in time and memory allocation. Preliminary results show that the proposed approach produces high quality results and scales up well. We also compared it to two popular clustering algorithms and show that this approach is much more efficient.
Keywords
"Clustering algorithms","Heuristic algorithms","Data mining","Algorithm design and analysis","Distributed databases","Shape","Partitioning algorithms"
Publisher
ieee
Conference_Titel
Spatial Data Mining and Geographical Knowledge Services (ICSDM), 2015 2nd IEEE International Conference on
Print_ISBN
978-1-4799-7748-2
Type
conf
DOI
10.1109/ICSDM.2015.7298026
Filename
7298026
Link To Document