Co-clustering is a powerful data mining technique with varied applications such as text clustering, microarray analysis and recommender systems. Recently, an informationtheoretic co-clustering approach applicable to empirical joint probability distributions was proposed. In many situations, co-clustering of more general matrices is desired. In this paper, we present a substantially generalized co-clustering framework wherein any Bregman divergence can be used in the objective function, and various conditional expectation based constraints can be considered based on the statistics that need to be preserved. Analysis of the coclustering problem leads to the minimum Bregman information principle, which generalizes the maximum entropy principle...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
In this paper, we introduce an assumption which makes it possible to extend the learn-ing ability of...
In this paper, we present a generative model for co-clustering and develop algorithms based on the m...
International audienceIn this paper, we present a novel method for co-clustering, an unsupervised le...
Clustering is an unsupervised process to determine which unlabeled objects in a set share interestin...
Co-clustering, that is partitioning a numerical matrix into “homogeneous” submatrices, has many appl...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Abstract—An idealized clustering algorithm seeks to learn a cluster-adjacency matrix such that, if t...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
The Expectation-Maximization (EM) algorithm is a very popular optimization tool in model-based clust...
The Expectation-Maximization (EM) algorithm is a very popular optimization tool in model-based clust...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
The Euclidean K-means problem is fundamental to clustering and over the years it has been intensely ...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
In this paper, we introduce an assumption which makes it possible to extend the learn-ing ability of...
In this paper, we present a generative model for co-clustering and develop algorithms based on the m...
International audienceIn this paper, we present a novel method for co-clustering, an unsupervised le...
Clustering is an unsupervised process to determine which unlabeled objects in a set share interestin...
Co-clustering, that is partitioning a numerical matrix into “homogeneous” submatrices, has many appl...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Abstract—An idealized clustering algorithm seeks to learn a cluster-adjacency matrix such that, if t...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
A wide variety of distortion functions are used for clustering, e.g., squared Euclidean distance, Ma...
The Expectation-Maximization (EM) algorithm is a very popular optimization tool in model-based clust...
The Expectation-Maximization (EM) algorithm is a very popular optimization tool in model-based clust...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
The Euclidean K-means problem is fundamental to clustering and over the years it has been intensely ...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
In this paper, we introduce an assumption which makes it possible to extend the learn-ing ability of...
In this paper, we present a generative model for co-clustering and develop algorithms based on the m...