In mixture model-based clustering applications, it is common to fit several models from a family and report clustering results from only the ‘best ’ one. In such circumstances, selection of this best model is achieved using a model selection criterion, most often the Bayesian information criterion. Rather than throw away all but the best model, we average multiple models that are in some sense close to the best one, thereby producing a weighted average of clustering results. Two (weighted) averaging approaches are considered: averaging the component membership probabilities and averaging models. In both cases, Occam’s window is used to determine closeness to the best model and weights are computed within a Bayesian model averaging paradigm....
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
The efficacy of family-based approaches to mixture model-based clustering and classification depends...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
Various methods have been developed to combine inference across multiple sets of results for unsuper...
Selecting a single model for clustering ignores the uncertainty left by finite data as to which is t...
The following mixture model-based clustering methods are compared in a simulation study with one-dim...
Two methods for both clustering data and choosing a mixture model are proposed. First, the unknown c...
We introduce a new approach to deciding the number of clusters. The approach is applied to Optimally...
International audienceBinning data provides a solution in deducing computation expense in cluster an...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Model-based cluster analysis is a common clustering method. Unlike the classical clustering methods,...
Clustering is a common and important issue, and finite mixture models based on the normal distributi...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
The efficacy of family-based approaches to mixture model-based clustering and classification depends...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
Various methods have been developed to combine inference across multiple sets of results for unsuper...
Selecting a single model for clustering ignores the uncertainty left by finite data as to which is t...
The following mixture model-based clustering methods are compared in a simulation study with one-dim...
Two methods for both clustering data and choosing a mixture model are proposed. First, the unknown c...
We introduce a new approach to deciding the number of clusters. The approach is applied to Optimally...
International audienceBinning data provides a solution in deducing computation expense in cluster an...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Clustering is task of assigning the objects into different groups so that the objects are more simil...
Variable selection for cluster analysis is a difficult problem. The difficulty originates not only f...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Model-based cluster analysis is a common clustering method. Unlike the classical clustering methods,...
Clustering is a common and important issue, and finite mixture models based on the normal distributi...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
The efficacy of family-based approaches to mixture model-based clustering and classification depends...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...