Self-Organizing Tree Using Cluster Validity
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概要
- 論文の詳細を見る
Self-organizing tree (S-TREE) models solve clustering problems by imposing tree-structured constraints on the solution. It has a self-organizing capacity and has better performance than previous tree-structured algorithms. S-TREE carries out pruning to reduce the effect of bad leaf nodes when the tree reaches a predetermined maximum size (U), However, it is difficult to determine U beforehand because it is problem-dependent. U gives the limit of tree growth and can also prevent self-organization of the tree. It may produce an unnatural clustering. In this paper, we propose an algorithm for pruning algorithm that does not require U. This algorithm prunes extra nodes based on a significant level of cluster validity and allows the S-TREE to grow by a self-organization. The performance of the new algorithm was examined by experiments on vector quantization. The results of experiments show that natural leaf nodes are formed by this algorithm without setting the limit for the growth of the S-TREE.
- 社団法人 電気学会の論文
- 2004-02-01
著者
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Maeda Junji
Muroran Institute Of Technology
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SUZUKI Yukinori
Muroran Institute of Technology
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SASAKI Yasue
Muroran Institute of Technology
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MIYAMOTO Takayuki
Muroran Institute of Technology
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