In the present paper we compare clustering solutions using indices of paired agreement. We propose a new method - IADJUST - to correct indices of paired agreement, excluding agreement by chance. This new method overcomes previous limitations known in the literature as it permits the correction of any index. We illustrate its use in external clustering validation, to measure the accordance between clusters and an a priori known structure. The adjusted indices are intended to provide a realistic measure of clustering performance that excludes agreement by chance with ground truth. We use simulated data sets, under a range of scenarios - considering diverse numbers of clusters, clusters overlaps and balances - to discuss the pertinence and the...
Evaluation and validation are essential tasks for achieving meaningful clustering results. Relative ...
External validation indexes allow similarities between two clustering solutions to be quantified. Wi...
Invited talk: To compare clustering partitions, Rand index (RI) and Adjusted Rand index (ARI) are co...
In the present paper we compare clustering solutions using indices of paired agreement. We propose a...
In the present paper we focus on the performance of clustering algorithms using indices of paired ag...
Statistical clustering is an exploratory method for finding groups of unlabeled observations in pote...
In unsupervised machine learning, agreement between partitions is commonly assessed with so-called e...
A clustering agreement index quantifies the similarity between two given clusterings. It is most com...
Mutual information is a very popular measure for comparing clusterings. Previous work has shown that...
The estimation of the appropriate number of clusters is a known problem in cluster anal-ysis, that a...
101 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Clustering and classification...
A key issue in cluster analysis is the choice of an appropriate clustering method and the determinat...
Several research fields frequently deal with the analysis of diverse classification results of the s...
There are various cluster validity indices used for evaluating clustering results. One of the main o...
Abstract—We review two clustering algorithms (hard c-means and single linkage) and three indexes of ...
Evaluation and validation are essential tasks for achieving meaningful clustering results. Relative ...
External validation indexes allow similarities between two clustering solutions to be quantified. Wi...
Invited talk: To compare clustering partitions, Rand index (RI) and Adjusted Rand index (ARI) are co...
In the present paper we compare clustering solutions using indices of paired agreement. We propose a...
In the present paper we focus on the performance of clustering algorithms using indices of paired ag...
Statistical clustering is an exploratory method for finding groups of unlabeled observations in pote...
In unsupervised machine learning, agreement between partitions is commonly assessed with so-called e...
A clustering agreement index quantifies the similarity between two given clusterings. It is most com...
Mutual information is a very popular measure for comparing clusterings. Previous work has shown that...
The estimation of the appropriate number of clusters is a known problem in cluster anal-ysis, that a...
101 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.Clustering and classification...
A key issue in cluster analysis is the choice of an appropriate clustering method and the determinat...
Several research fields frequently deal with the analysis of diverse classification results of the s...
There are various cluster validity indices used for evaluating clustering results. One of the main o...
Abstract—We review two clustering algorithms (hard c-means and single linkage) and three indexes of ...
Evaluation and validation are essential tasks for achieving meaningful clustering results. Relative ...
External validation indexes allow similarities between two clustering solutions to be quantified. Wi...
Invited talk: To compare clustering partitions, Rand index (RI) and Adjusted Rand index (ARI) are co...