Clustering tree (slides)
The clustering tree algorithm is both a clustering approach and a multi-objective supervised learning method.
In the cluster analysis framework, the aim is to group objects in clusters, where the objects in the same cluster are similar in a certain sense. The clustering tree algorithm enables to perform this kind of task. We obtain a decision tree as a clustering structure. Thus, the deployment of the classification rule in the information system is really easy.
But we can also consider the clustering tree as an extension of the classification/regression tree because we can distinguish two set of variables: the explained (active) variables which are used to determine the similarities between the objects; the predictive (illustrative) variables which allows to describe the groups.
In this slides, we show the main features of this approach.
Keywords: cluster analysis, clustering, clustering tree, groups characterization
Slides: Clustering tree
References :
M. Chavent (1998), « A monothetic clustering method », Pattern Recognition Letters, 19, 989—996.
H. Blockeel, L. De Raedt, J. Ramon (1998), « Top-Down Induction of Clustering Trees », ICML, 55—63.
In the cluster analysis framework, the aim is to group objects in clusters, where the objects in the same cluster are similar in a certain sense. The clustering tree algorithm enables to perform this kind of task. We obtain a decision tree as a clustering structure. Thus, the deployment of the classification rule in the information system is really easy.
But we can also consider the clustering tree as an extension of the classification/regression tree because we can distinguish two set of variables: the explained (active) variables which are used to determine the similarities between the objects; the predictive (illustrative) variables which allows to describe the groups.
In this slides, we show the main features of this approach.
Keywords: cluster analysis, clustering, clustering tree, groups characterization
Slides: Clustering tree
References :
M. Chavent (1998), « A monothetic clustering method », Pattern Recognition Letters, 19, 989—996.
H. Blockeel, L. De Raedt, J. Ramon (1998), « Top-Down Induction of Clustering Trees », ICML, 55—63.
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