We present a novel algorithm for agglomerative hierarchical clustering based on evaluating marginal likelihoods of a probabilistic model. This algorithm has several advantages over traditional distance-based agglomerative clustering algorithms. (1) It defines a probabilistic model of the data which can be used to compute the predictive distribution of a test point and the probability of it belonging to any of the existing clusters in the tree. (2) It uses a model-based criterion to decide on merging clusters rather than an ad-hoc distance metric. (3) Bayesian hypothesis testing is used to decide which merges are advantageous and to output the recommended depth of the tree. (4) The algorithm can be interpreted as a novel fast bottom-up appro...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
Abstract. Agglomerative hierarchical clustering methods based on Gaussian probability models have re...
Abstract We introduce a new Bayesian model for hierarchical clustering based on a priorover trees ca...
Description The method performs bottom-up hierarchical clustering, using a Dirichlet Process (infi-n...
Current methods for hierarchical clustering of data either operate on features of the data or make l...
Clustering problems (including the clustering of individuals into outcrossing populations, hybrid ge...
International audienceIn this paper, we introduce a two step methodology to extract a hierarchical c...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
Abstract. Agglomerative hierarchical clustering methods based on Gaussian probability models have re...
Abstract We introduce a new Bayesian model for hierarchical clustering based on a priorover trees ca...
Description The method performs bottom-up hierarchical clustering, using a Dirichlet Process (infi-n...
Current methods for hierarchical clustering of data either operate on features of the data or make l...
Clustering problems (including the clustering of individuals into outcrossing populations, hybrid ge...
International audienceIn this paper, we introduce a two step methodology to extract a hierarchical c...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
International audienceFinding a set of nested partitions of a dataset is useful to uncover relevant ...
Abstract. Agglomerative hierarchical clustering methods based on Gaussian probability models have re...