The k-medoids problem is a combinatorial optimisation problem with multiples applications in Resource Allocation, Mobile Computing, Sensor Networks and Telecommunications.Real instances of this problem involve hundreds of thousands of points and thousands of medoids.Despite the proliferation of parallel architectures, this problem has been mostly tackled using sequential approaches.In this paper, we study the impact of space-partitioning techniques on the performance of parallel local search algorithms to tackle the k-medoids clustering problem, and compare these results with the ones obtained using sampling.Our experiments suggest that approaches relying on partitioning scale more while preserving the quality of the solution
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
In this paper, we propose a novel implementation for solving the large-scale k-medoids clustering pr...
Abstract: We consider clustering as a combinatorial optimisation problem. Local search provides a si...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
K-Means is a popular clustering algorithm which adopts an iterative refinement procedure to determin...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
The k-medoids algorithm is one of the best-known clustering algorithms. Despite this, however, it is...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
In this paper we present a new algorithm for the k- partitioning problem which achieves an improved...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when ...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when ...
Besides traditional domains (e.g., resource allocation, data mining applications), algorithms for me...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
In this paper, we propose a novel implementation for solving the large-scale k-medoids clustering pr...
Abstract: We consider clustering as a combinatorial optimisation problem. Local search provides a si...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
K-Means is a popular clustering algorithm which adopts an iterative refinement procedure to determin...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
The k-medoids algorithm is one of the best-known clustering algorithms. Despite this, however, it is...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
In this paper we present a new algorithm for the k- partitioning problem which achieves an improved...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when d...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when ...
K-medoids clustering is categorized as partitional clustering. K-medoids offers better result when ...
Besides traditional domains (e.g., resource allocation, data mining applications), algorithms for me...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
International audienceThe k-medoids problem is a discrete sum-of-square clustering problem, which is...
In this paper, we propose a novel implementation for solving the large-scale k-medoids clustering pr...
Abstract: We consider clustering as a combinatorial optimisation problem. Local search provides a si...