This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. clustering ensemble) based on some measures of agreement between partitions, which are originally used to compare two clusterings (the obtained clustering vs. u ground truth clustering) for the evaluation of a clustering algorithm. Though we can follow a greedy strategy to optimize these measures as objective functions of clustering ensemble, some local optima may be obtained and simultaneously the computational cost is too large. To avoid the local optima, we then consider a simulated annealing optimization scheme that operates through single label changes. Moreover, for these measures between partitions based on the relationship (joined or se...
k-means is traditionally viewed as an algorithm for the unsupervised clustering of a heterogeneous p...
The objective functions in optimization models of the sum-of-squares clustering problem reflect intr...
Traditional clustering algorithms have different criteria and biases, and there is no single algorit...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Abstract: Clustering is one of the fastest growing research areas because of availability of huge am...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Abstract--We formalize clustering as a partitioning problem with a user-defined internal clustering ...
Clustering is a difficult task: there is no single cluster definition and the data can have more tha...
Cluster Ensembles is a framework for combining multiple partitionings obtained from separate cluster...
Clustering ensemble has become a very popular technique in the past few years due to its potentialit...
Clustering, Binary relations, Equivalence relation, Cliques, Combinatorial optimization, Heuristics,...
Ensemble and Consensus Clustering address the problem of unifying multiple clustering results into ...
In the present paper we compare clustering solutions using indices of paired agreement. We propose a...
A process of similar data items into groups is called data clustering. Partitioning a Data Set into ...
A clustering ensemble combines in a consensus function the partitions generated by a set of independ...
k-means is traditionally viewed as an algorithm for the unsupervised clustering of a heterogeneous p...
The objective functions in optimization models of the sum-of-squares clustering problem reflect intr...
Traditional clustering algorithms have different criteria and biases, and there is no single algorit...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Abstract: Clustering is one of the fastest growing research areas because of availability of huge am...
In this paper we discuss the solution of the clustering problem usually solved by the K-means algori...
Abstract--We formalize clustering as a partitioning problem with a user-defined internal clustering ...
Clustering is a difficult task: there is no single cluster definition and the data can have more tha...
Cluster Ensembles is a framework for combining multiple partitionings obtained from separate cluster...
Clustering ensemble has become a very popular technique in the past few years due to its potentialit...
Clustering, Binary relations, Equivalence relation, Cliques, Combinatorial optimization, Heuristics,...
Ensemble and Consensus Clustering address the problem of unifying multiple clustering results into ...
In the present paper we compare clustering solutions using indices of paired agreement. We propose a...
A process of similar data items into groups is called data clustering. Partitioning a Data Set into ...
A clustering ensemble combines in a consensus function the partitions generated by a set of independ...
k-means is traditionally viewed as an algorithm for the unsupervised clustering of a heterogeneous p...
The objective functions in optimization models of the sum-of-squares clustering problem reflect intr...
Traditional clustering algorithms have different criteria and biases, and there is no single algorit...