In this paper we discuss the solution of the clustering problem usually solved by the K-means algorithm. The problem is known to have local minimum solutions which are usually what the K-means algorithm obtains. The simulated annealing approach for solving optimization problems is described and is proposed for solving the clustering problem. The parameters of the algorithm are discussed in detail and it is shown that the algorithm converges to a global solution of the clustering problem. We also find optimal parameters values for a specific class of data sets and give recommendations on the choice of parameters for general data sets. Finally, advantages and disadvantages of the approach are presented
AbstractIn this paper we combine the largest minimum distance algorithm and the traditional K-Means ...
We discuss a variety of clustering problems arising in combinatorial applications and in classifying...
The k-means clustering method is one of the most widely used techniques in big data analytics. In th...
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...
Explores the applicability of simulated annealing, a probabilistic search method, for finding optima...
k-means is traditionally viewed as an algorithm for the unsupervised clustering of a heterogeneous p...
This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. cl...
Abstract—This paper introduces an optimized version of the standard K-Means algorithm. The optimizat...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
In this paper, we demonstrate how simulated annealing algorithm can be applied to clustering algorit...
215 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2004.The study of the properties o...
This paper introduces k\u27-means algorithm that performs correct clustering without pre-assigning t...
K-Means is one of the most popular clustering algorithms, and it is easy to implement It seeks to m...
AbstractIn this paper we combine the largest minimum distance algorithm and the traditional K-Means ...
We discuss a variety of clustering problems arising in combinatorial applications and in classifying...
The k-means clustering method is one of the most widely used techniques in big data analytics. In th...
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...
Explores the applicability of simulated annealing, a probabilistic search method, for finding optima...
k-means is traditionally viewed as an algorithm for the unsupervised clustering of a heterogeneous p...
This paper presents a fast simulated annealing framework for combining multiple clusterings (i.e. cl...
Abstract—This paper introduces an optimized version of the standard K-Means algorithm. The optimizat...
Cluster analysis method is one of the most analytical methods of data mining. The method will direct...
We study the problem of finding an optimum clustering, a problem known to be NP-hard. Existing liter...
In this paper, we demonstrate how simulated annealing algorithm can be applied to clustering algorit...
215 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2004.The study of the properties o...
This paper introduces k\u27-means algorithm that performs correct clustering without pre-assigning t...
K-Means is one of the most popular clustering algorithms, and it is easy to implement It seeks to m...
AbstractIn this paper we combine the largest minimum distance algorithm and the traditional K-Means ...
We discuss a variety of clustering problems arising in combinatorial applications and in classifying...
The k-means clustering method is one of the most widely used techniques in big data analytics. In th...