Title
The k-means clustering architecture in the multi-stage data mining process
Abstract
In this paper, we used software engineering principles for the development of models and proposed the K-Means clustering architecture implemented on the multi-stage data mining process. We developed a modified architecture and expanded it by showing refinements on every process of the clustering and knowledge discovery stages. We used the mentioned hierarchical clustering model to partition the data into smaller groups of attributes so that we would determine the data structure before applying the data mining tools. The experiment shows that the model using the clustering resulted to an isolated but imperative association rules based on clustered data, which in return could be practically explained for decision making purposes. Shorter processing time had been observed in computing for smaller clusters implying faster and ideal processing period than dealing with the entire dataset.
Year
DOI
Venue
2005
10.1007/11424826_8
ICCSA
Keywords
Field
DocType
smaller group,k-means clustering architecture,hierarchical clustering model,multi-stage data mining process,smaller cluster,modified architecture,shorter processing time,ideal processing period,data mining tool,data structure,hierarchical clustering,knowledge discovery,software engineering,association rule,k means clustering,data mining
Hierarchical clustering,Fuzzy clustering,Canopy clustering algorithm,Data mining,CURE data clustering algorithm,Data stream clustering,Correlation clustering,Computer science,Consensus clustering,Cluster analysis
Conference
Volume
ISSN
ISBN
3481
0302-9743
3-540-25861-2
Citations 
PageRank 
References 
2
0.39
3
Authors
4
Name
Order
Citations
PageRank
Bobby D. Gerardo12713.79
Jaewan Lee26214.66
Yeon Sung Choi330.75
Malrey Lee419741.30