Gürsoy, AttilaCengiz, Ilker2016-02-082016-02-0820010302-9743http://hdl.handle.net/11693/27617Conference name: 7th International Euro-Par ConferenceDate of Conference: August 28–31, 2001We have developed and evaluated two parallelization schemes for a tree-based k-means clustering method on shared memory machines. One scheme is to partition the pattern space across processors. We have determined that spatial decomposition of patterns outperforms random decomposition even though random decomposition has almost no load imbalance problem. The other scheme is the parallel traverse of the search tree. This approach solves the load imbalance problem and performs slightly better than the spatial decomposition, but the efficiency is reduced due to thread synchronizations. In both cases, parallel treebased k-means clustering is significantly faster than the direct parallel k-means. © Springer-Verlag Berlin Heidelberg 2001.EnglishClustering algorithmsDistributed computer systemsParallel architecturesK-means clusteringK-means clustering methodParallelizationsRandom decompositionShared memory architectureShared memory machinesSpatial decompositionsThread synchronizationMemory architectureParallel pruning for k-means clustering on shared memory architecturesConference Paper