International audienceMany datasets take the form of a bipartite graph where two types of nodes are connected by relationships, like the movies watched by a user or the tags associated with a file. The partitioning of the bipartite graph could be used to fasten recommender systems, or reduce the information retrieval system's index size, by identifying groups of items with similar properties. This type of graph is often processed by algorithms using the Vector Space Model representation, where a binary vector represents an item with 0 and 1. The main problem with this representation is the dimension relatedness, like words' synonymity, which is not considered. This article proposes a co-clustering algorithm using items projection, allowing ...
The paper first offers a parallel between two approaches to conceptual clustering, namely formal con...
Many data types arising from data mining applications can be modeled as bipartite graphs, examples i...
We study the problem of computing similarity rankings in large-scale multi-categorical bipartite gra...
Abstract—Co-clustering has been defined as a way to or-ganize simultaneously subsets of instances an...
The claimed advantage of describing a document data set with a bipartite graph is that partitioning ...
National audienceCo-clustering aims to identify block patterns in a data table, from a joint cluster...
Clustering is the unsupervised classification of patterns (observations, data items, or feature vect...
We argue that any document set can be modelled as a hypergraph, and we apply a graph clustering proc...
Dimensionality reduction and data embedding methods generate low dimensional representations of a si...
Web clustering is an approach for aggregating Web objects into various groups according to underlyin...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
Biclustering and coclustering are data mining tasks capable of extracting relevant information from ...
Web clustering is an approach for aggregating Web objects into various groups according to underlyin...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
Community detection or clustering is a fundamental task in the analysis of network data. Most networ...
The paper first offers a parallel between two approaches to conceptual clustering, namely formal con...
Many data types arising from data mining applications can be modeled as bipartite graphs, examples i...
We study the problem of computing similarity rankings in large-scale multi-categorical bipartite gra...
Abstract—Co-clustering has been defined as a way to or-ganize simultaneously subsets of instances an...
The claimed advantage of describing a document data set with a bipartite graph is that partitioning ...
National audienceCo-clustering aims to identify block patterns in a data table, from a joint cluster...
Clustering is the unsupervised classification of patterns (observations, data items, or feature vect...
We argue that any document set can be modelled as a hypergraph, and we apply a graph clustering proc...
Dimensionality reduction and data embedding methods generate low dimensional representations of a si...
Web clustering is an approach for aggregating Web objects into various groups according to underlyin...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
Biclustering and coclustering are data mining tasks capable of extracting relevant information from ...
Web clustering is an approach for aggregating Web objects into various groups according to underlyin...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
Community detection or clustering is a fundamental task in the analysis of network data. Most networ...
The paper first offers a parallel between two approaches to conceptual clustering, namely formal con...
Many data types arising from data mining applications can be modeled as bipartite graphs, examples i...
We study the problem of computing similarity rankings in large-scale multi-categorical bipartite gra...