The task of clustering is a fundamental task in many important human endeavors. In machine learning parlance, it is an unsupervised learning tool for discovering patterns in data. Specifically, its goal is to find groups of objects in the data that are similar in some sense. Some important fields where clustering is used include medical diagnostics, bioinformatics, social network analysis and market analysis. Clustering is also used "behind the scenes" as a preprocessing step to other tasks, such as Web search and recommender systems.Co-clustering can be viewed as a generalization of clustering to a wider range of data. While clustering methods work on affinity data (data describing similarity between objects), co-clustering methods can als...
Research on the problem of clustering tends to be fragmented across the pattern recognition, databas...
Clustering of patients allows to find groups of subjects with similar characteristics. This categori...
A Relational-Sequential dataset (or RS-dataset for short) contains records comprised of a patients v...
The task of clustering is a fundamental task in many important human endeavors. In machine learning ...
This dissertation focuses on the topic of relational data clustering, which is the task of organizin...
Context Patient stratification is the cornerstone of numerous health studies, serving to enhance med...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
Clustering is the unsupervised classification of patterns (observations, data items, or feature vect...
This chapter focuses on clustering of the data resulting from quantified selves. It introduces dista...
This master thesis descripes known methods of data clustering and examines their possible applicatio...
Co-clustering can be viewed as a two-way (bilinear) factorization of a large data matrix into dense/...
A Relational-Sequential dataset (or RS-dataset for short) contains records comprised of a patient's ...
Clustering plays an important role in data mining, as it is used by many applications as a preproces...
International audienceThe dataset that motivated this work is a psychological survey on women affect...
Research on the problem of clustering tends to be fragmented across the pattern recognition, databas...
Clustering of patients allows to find groups of subjects with similar characteristics. This categori...
A Relational-Sequential dataset (or RS-dataset for short) contains records comprised of a patients v...
The task of clustering is a fundamental task in many important human endeavors. In machine learning ...
This dissertation focuses on the topic of relational data clustering, which is the task of organizin...
Context Patient stratification is the cornerstone of numerous health studies, serving to enhance med...
Contributed 28: Social Networks and ClusteringInternational audienceIn data analysis domain, data ar...
Co-clustering aims to identify block patterns in a data table, from a joint clustering of rows and c...
Clustering is the unsupervised classification of patterns (observations, data items, or feature vect...
This chapter focuses on clustering of the data resulting from quantified selves. It introduces dista...
This master thesis descripes known methods of data clustering and examines their possible applicatio...
Co-clustering can be viewed as a two-way (bilinear) factorization of a large data matrix into dense/...
A Relational-Sequential dataset (or RS-dataset for short) contains records comprised of a patient's ...
Clustering plays an important role in data mining, as it is used by many applications as a preproces...
International audienceThe dataset that motivated this work is a psychological survey on women affect...
Research on the problem of clustering tends to be fragmented across the pattern recognition, databas...
Clustering of patients allows to find groups of subjects with similar characteristics. This categori...
A Relational-Sequential dataset (or RS-dataset for short) contains records comprised of a patients v...