A New Data Clustering Approach for Data Mining in Large Databases
نویسندگان
چکیده
Clustering is the unsupervised classification of patterns (data items, feature vectors, or observations) into groups (clusters). Clustering in data mining is very useful to discover distribution patterns in the underlying data. Clustering algorithms usually employ a distance metric based similarity measure in order to partition the database such that data points in the same partition are more similar than points in different partitions. In this paper, we present a new data clustering method for data mining in large databases. Our simulation results show that the proposed novel clustering method performs better than the Fast SOM combines K-means approach (FSOM+K-means) and Genetic K-Means Algorithm (GKA). In addition, in all the cases we studied, our method produces much smaller errors than both the FSOM+K-means approach and GKA.
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تاریخ انتشار 2002