Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blocks induced by the row / column partitions are good clusters. Motivated by several applications in text mining, market-basket analysis, and bioinformatics, this problem has attracted severe attention in the past few years. Unfortunately, to date, most of the algorithmic work on this problem has been heuristic in nature. In this work we obtain the first approximation algorithms for the co-clustering problem. Our algorithms are simple and obtain constant-factor approximation solutions to the optimum. We also show that co-clustering is NP-hard, thereby complementing our algorithmic result. Copyright 2008 ACM
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chaw...
Non-negative dyadic data, that is data representing observations which relate two finite sets of obj...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Co-clustering, that is partitioning a numerical matrix into “homogeneous” submatrices, has many appl...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
textCo-clustering is rather a recent paradigm for unsupervised data analysis, but it has become incr...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
Matrix completion and approximation are popular tools to capture a user’s preferences for recommenda...
In this paper we propose a fuzzy co-clustering algorithm via modularity maximization, named MMFCC. I...
International audienceWe present Coclus, a novel diagonal co-clustering algorithm which is able to e...
In this paper, we present a generative model for co-clustering and develop algorithms based on the m...
With the development of the information technology, the amount of data, e.g. text, image and video, ...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chaw...
Non-negative dyadic data, that is data representing observations which relate two finite sets of obj...
Co-clustering is the simultaneous partitioning of the rows and columns of a matrix such that the blo...
Co-clustering, that is partitioning a numerical matrix into “homogeneous” submatrices, has many appl...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
textCo-clustering is rather a recent paradigm for unsupervised data analysis, but it has become incr...
Two dimensional contingency tables or co-occurrence matrices arise frequently in various important a...
Matrix completion and approximation are popular tools to capture a user’s preferences for recommenda...
In this paper we propose a fuzzy co-clustering algorithm via modularity maximization, named MMFCC. I...
International audienceWe present Coclus, a novel diagonal co-clustering algorithm which is able to e...
In this paper, we present a generative model for co-clustering and develop algorithms based on the m...
With the development of the information technology, the amount of data, e.g. text, image and video, ...
International audienceMany of the datasets encountered in statistics are two-dimensional in nature a...
International audienceCo-clustering aims at computing a bi-partition that is a collection of co-clus...
AbstractThe Correlation Clustering problem has been introduced recently [N. Bansal, A. Blum, S. Chaw...
Non-negative dyadic data, that is data representing observations which relate two finite sets of obj...