This paper presents the Distributed Kruskal Algorithm for Minimum Spanning Tree (MST) based clustering to be used in the context of recommendation engines. The algorithm can operate over large graph data sets distributed over a number of machines. The operation of the algorithm is evaluated by comparing both the quality of the cluster configurations produced, and the accuracy of the predictions, with non-MST based clustering approaches. The results indicate that the proposed approach produces comparable recommendations at much lower storage, hence runtime, costs
In this article we propose a new distance-based clustering algorithm. Distance-based clustering meth...
Abstract. In this paper we present an effective recommendation algo-rithm using a refined neighbor s...
Clustering is an automated search for hidden patterns in a datasets to unveil group of related obser...
The Euclidean minimum spanning tree for a set of points is the shortest tree connecting all the poin...
Clustering technique is one of the most important and basic tool for data mining. Cluster algorithms...
Among all the different clustering approaches proposed so far, graph-based algorithms are particular...
Among all the different clustering approaches proposed so far, graph-based algorithms are particular...
Identification of neighbourhood based on multi-clusters has been successfully applied to recommender...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
bzhana~hpl.hp.com Data clustering is one of the fundamental techniques in scientific data analysis a...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
Recommender systems apply information filtering technologies to identify a set of items that could b...
Minimum spanning tree (MST)-based clustering algorithms are widely used to detect clusters with dive...
The minimum spanning tree clustering algorithm is capable of detecting clusters with irregular bound...
Abstract—For the management of a virtual P2P super-computer one is interested in subgroups of proces...
In this article we propose a new distance-based clustering algorithm. Distance-based clustering meth...
Abstract. In this paper we present an effective recommendation algo-rithm using a refined neighbor s...
Clustering is an automated search for hidden patterns in a datasets to unveil group of related obser...
The Euclidean minimum spanning tree for a set of points is the shortest tree connecting all the poin...
Clustering technique is one of the most important and basic tool for data mining. Cluster algorithms...
Among all the different clustering approaches proposed so far, graph-based algorithms are particular...
Among all the different clustering approaches proposed so far, graph-based algorithms are particular...
Identification of neighbourhood based on multi-clusters has been successfully applied to recommender...
Graph clustering is a fundamental computational problem with a number of applications in algorithm d...
bzhana~hpl.hp.com Data clustering is one of the fundamental techniques in scientific data analysis a...
This paper deals with graph clustering algorithm which partitions a set of vertices in graphs into s...
Recommender systems apply information filtering technologies to identify a set of items that could b...
Minimum spanning tree (MST)-based clustering algorithms are widely used to detect clusters with dive...
The minimum spanning tree clustering algorithm is capable of detecting clusters with irregular bound...
Abstract—For the management of a virtual P2P super-computer one is interested in subgroups of proces...
In this article we propose a new distance-based clustering algorithm. Distance-based clustering meth...
Abstract. In this paper we present an effective recommendation algo-rithm using a refined neighbor s...
Clustering is an automated search for hidden patterns in a datasets to unveil group of related obser...