One of the most important and challenging questions in the area of clustering is how to choose the best-fitting algorithm and parameterization to obtain an optimal clustering for the considered data. The clustering aggregation concept tries to bypass this problem by generating a set of separate, heterogeneous partitionings of the same data set, from which an aggregate clustering is derived. As of now, almost every existing aggregation approach combines given crisp clusterings on the basis of pair-wise similarities. In this paper, we regard an input set of soft clusterings and show that it contains additional information that is efficiently useable for the aggregation. Our approach introduces an expansion of mentioned pair-wise similarities,...
Despite the huge success of machine learning methods in the last decade, a crucial issue is to contr...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
We consider the following problem: given a set of clusterings, find a clustering that agrees as much...
We consider the following problem: given a set of clusterings, find a single clustering that agrees ...
We formulate clustering aggregation as a special instance of Maximum-Weight Independent Set (MWIS) p...
Cluster Ensembles is a framework for combining multiple partitionings obtained from separate cluster...
When dealing with multiple clustering solutions, the problem of extrapolating a small number of good...
This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. cl...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Abstract:-Clustering ensemble is a new topic in machine learning. It can find a combined clustering ...
Clustering is one of the most used tools in data analysis. In the last decades, due to the increasin...
General clustering deals with weighted objects and fuzzy memberships. We investigate the group- or o...
Recently published studies have shown that partitional clustering algorithms that optimize certain c...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
Despite the huge success of machine learning methods in the last decade, a crucial issue is to contr...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...
We consider the following problem: given a set of clusterings, find a clustering that agrees as much...
We consider the following problem: given a set of clusterings, find a single clustering that agrees ...
We formulate clustering aggregation as a special instance of Maximum-Weight Independent Set (MWIS) p...
Cluster Ensembles is a framework for combining multiple partitionings obtained from separate cluster...
When dealing with multiple clustering solutions, the problem of extrapolating a small number of good...
This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. cl...
One of the key tools to gain knowledge from data is clustering: identifying groups of instances that...
Abstract:-Clustering ensemble is a new topic in machine learning. It can find a combined clustering ...
Clustering is one of the most used tools in data analysis. In the last decades, due to the increasin...
General clustering deals with weighted objects and fuzzy memberships. We investigate the group- or o...
Recently published studies have shown that partitional clustering algorithms that optimize certain c...
Several clustering methods (e.g., Normalized Cut and Ratio Cut) divide the Min Cut cost function by ...
Despite the huge success of machine learning methods in the last decade, a crucial issue is to contr...
International audienceWe propose a meta-heuristic algorithm for clustering objects that are describe...
MasterAlternative clustering algorithms target finding alternative groupings of a dataset on which t...