A new criterion for clusters validation
H Alizadeh, B Minaei, H Parvin - International Conference on Engineering …, 2011 - Springer
H Alizadeh, B Minaei, H Parvin
International Conference on Engineering Applications of Neural Networks, 2011•SpringerIn this paper a new criterion for clusters validation is proposed. This new cluster validation
criterion is used to approximate the goodness of a cluster. The clusters which satisfy a
threshold of this measure are selected to participate in clustering ensemble. For combining
the chosen clusters, a co-association based consensus function is applied. Since the
Evidence Accumulation Clustering method cannot derive the co-association matrix from a
subset of clusters, a new EAC based method which is called Extended EAC, EEAC, is …
criterion is used to approximate the goodness of a cluster. The clusters which satisfy a
threshold of this measure are selected to participate in clustering ensemble. For combining
the chosen clusters, a co-association based consensus function is applied. Since the
Evidence Accumulation Clustering method cannot derive the co-association matrix from a
subset of clusters, a new EAC based method which is called Extended EAC, EEAC, is …
Abstract
In this paper a new criterion for clusters validation is proposed. This new cluster validation criterion is used to approximate the goodness of a cluster. The clusters which satisfy a threshold of this measure are selected to participate in clustering ensemble. For combining the chosen clusters, a co-association based consensus function is applied. Since the Evidence Accumulation Clustering method cannot derive the co-association matrix from a subset of clusters, a new EAC based method which is called Extended EAC, EEAC, is applied for constructing the co-association matrix from the subset of clusters. Employing this new cluster validation criterion, the obtained ensemble is evaluated on some well-known and standard data sets. The empirical studies show promising results for the ensemble obtained using the proposed criterion comparing with the ensemble obtained using the standard clusters validation criterion.
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