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TIME
1997
IEEE

On Effective Data Clustering in Bitemporal Databases

13 years 8 months ago
On Effective Data Clustering in Bitemporal Databases
Temporal databases provide built-in supports for efficient recording and querying of time-evolving data. In this paper, data clustering issues in temporal database environment are addressed. Data clustering is one of the most effective techniques that can improve performance of a database system. However, data clustering methods for conventional databases do not perform well in temporal databases because there exist crucial diflerences between their query patterns. We propose a data clustering measure, called Temporal Afinity, that can be used for the clustering of temporal data. The temporal aJginity, which is based on the analysis of query patterns in temporal databases, reflects the closeness of temporal data objects in viewpoints of temporal query processing. We perform experiments to evaluate the proposed measure. The experimental results show that a data clustering method with the temporal afinity works better than other methods.
Jong Soo Kim, Myoung-Ho Kim
Added 06 Aug 2010
Updated 06 Aug 2010
Type Conference
Year 1997
Where TIME
Authors Jong Soo Kim, Myoung-Ho Kim
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