algorithm and the K-means algorithm gives the
particles both global and local search capabilities.
The results show that its performance is better than
those of other three clustering algorithms for
Advantech Company’s order clustering problem.
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AN ORDER CLUSTERING SYSTEM USING ART2 NEURAL NETWORK AND PARTICLE SWARM
OPTIMIZATION METHODN
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