Address email Clustering is often formulated as the maximum likelihood estimation of a mixture model that explains the data. The EM algorithm widely used to solve the resulting optimization problem is inherently a gradient-descent method and is sensitive to initialization. The resulting solution is a local optimum in the neighborhood of the initial guess. This sensitivity to initialization presents a significant challenge in clustering large data sets into many clusters. In this paper, we present a different approach to approximate mixture fitting for clustering. We introduce an exemplar-based likelihood function that approximates the exact likelihood. This formulation leads to a convex minimization problem and an efficient algorithm with g...
In Chapter 1 we give a general introduction and motivate the need for clustering and dimension reduc...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...
Address email Clustering is often formulated as the maximum likelihood estimation of a mixture model...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
The Expectation–Maximization (EM) algorithm is a popular tool in a wide variety of statistical setti...
Exemplar-based clustering methods have been extensively shown to be effective in many clustering pro...
We study estimation of mixture models for problems in which multiple views of the instances are avai...
In this study, we consider unsupervised clustering of categorical vectors that can be of different s...
International audienceMixtures of von Mises-Fisher distributions can be used to cluster data on the ...
In this paper we consider both clustering and graphical modeling for given data. The clustering is t...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
International audienceMixtures of von Mises-Fisher distributions can be used to cluster data on the ...
Model-based approaches to cluster analysis and mixture modeling often involve maximizing classificat...
© 2018 IEEE. In this paper, we present a local information theoretic approach to explicitly learn pr...
In Chapter 1 we give a general introduction and motivate the need for clustering and dimension reduc...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...
Address email Clustering is often formulated as the maximum likelihood estimation of a mixture model...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
The Expectation–Maximization (EM) algorithm is a popular tool in a wide variety of statistical setti...
Exemplar-based clustering methods have been extensively shown to be effective in many clustering pro...
We study estimation of mixture models for problems in which multiple views of the instances are avai...
In this study, we consider unsupervised clustering of categorical vectors that can be of different s...
International audienceMixtures of von Mises-Fisher distributions can be used to cluster data on the ...
In this paper we consider both clustering and graphical modeling for given data. The clustering is t...
With the recent growth in data availability and complexity, and the associated outburst of elaborate...
International audienceMixtures of von Mises-Fisher distributions can be used to cluster data on the ...
Model-based approaches to cluster analysis and mixture modeling often involve maximizing classificat...
© 2018 IEEE. In this paper, we present a local information theoretic approach to explicitly learn pr...
In Chapter 1 we give a general introduction and motivate the need for clustering and dimension reduc...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
We present the approach to clustering whereby a normal mixture model is fitted to the data by maximu...