Feature Selection as Retrospective Pruning in Hierarchical Clustering

نویسنده

  • Luis Talavera
چکیده

Although feature selection is a central problem in inductive learning as suggested by the growing amount of research in this area, most of the work has been carried out under the supervised learning paradigm, paying little attention to unsupervised learning tasks and, particularly, clustering tasks. In this paper, we analyze the particular beneets that feature selection may provide in hierarchical clustering. We propose a view of feature selection as a tree pruning process similar to those used in decision tree learning. Under this framework, we perform several experiments using diierent pruning strategies and considering a multiple prediction task. Results suggest that hierarchical clusterings can be greatly simpliied without diminishing accuracy.

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تاریخ انتشار 1999