International audienceThe aim of collaborative clustering is to make different clustering methods collaborate, in order to reach at an agreement on the partitioning of a common dataset. As different clustering methods can produce different partitioning of the same dataset, finding a consensual clustering from these results is often a hard task. The collaboration aims to make the methods agree on the partitioning through a refinement of their results. This process tends to make the results more similar. In this paper, after the introduction of the collaboration process, we present different ways to integrate background knowledge into it. Indeed, in recent years, the integration of background knowledge in clustering algorithms has been the su...
Over the last decades, a great variety of data mining techniques have been developed to reach goals ...
Abstract—Lack of supervision in clustering algorithms often leads to clusters that are not useful or...
Les nouveaux défis apportés par les données complexes imposent le développement de nouvelles méthode...
International audienceThe aim of collaborative clustering is to reveal the common underlying structu...
International audienceClustering is one type of unsupervised learning where the goal is to partition...
Collaborative Clustering is a data mining task the aim of which is to use several clustering algorit...
Abstract. This talk is an attempt at structuring and systematising the develop-ment of clustering as...
We propose a new approach—called PK-clustering—to help social scientists create meaningful clusters ...
Les nouveaux défis apportés par les données complexes imposent le développement de nouvelles méthode...
Abstract: Clustering is the assignment of data objects (records) into groups (called clusters) so th...
© 2014 IEEE. Preprocessing is generally used for data analysis in the real world datasets that are n...
This paper examines the problem of combining multiple partitionings of a set of objects into a singl...
In this paper, I describe a large variety of clustering methods within a single framework. This pape...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
International audienceUnsupervised machine learning approaches involving several clustering algorith...
Over the last decades, a great variety of data mining techniques have been developed to reach goals ...
Abstract—Lack of supervision in clustering algorithms often leads to clusters that are not useful or...
Les nouveaux défis apportés par les données complexes imposent le développement de nouvelles méthode...
International audienceThe aim of collaborative clustering is to reveal the common underlying structu...
International audienceClustering is one type of unsupervised learning where the goal is to partition...
Collaborative Clustering is a data mining task the aim of which is to use several clustering algorit...
Abstract. This talk is an attempt at structuring and systematising the develop-ment of clustering as...
We propose a new approach—called PK-clustering—to help social scientists create meaningful clusters ...
Les nouveaux défis apportés par les données complexes imposent le développement de nouvelles méthode...
Abstract: Clustering is the assignment of data objects (records) into groups (called clusters) so th...
© 2014 IEEE. Preprocessing is generally used for data analysis in the real world datasets that are n...
This paper examines the problem of combining multiple partitionings of a set of objects into a singl...
In this paper, I describe a large variety of clustering methods within a single framework. This pape...
Cluster or co-cluster analyses are important tools in a variety of scientific areas. The introductio...
International audienceUnsupervised machine learning approaches involving several clustering algorith...
Over the last decades, a great variety of data mining techniques have been developed to reach goals ...
Abstract—Lack of supervision in clustering algorithms often leads to clusters that are not useful or...
Les nouveaux défis apportés par les données complexes imposent le développement de nouvelles méthode...