Mining association rules from large databases is very costly. We propose to develop parallel algorithms for this task on shared-memory multiprocessor (SMP). All proposed parallel algorithms for other paradigms follow the conventional level-wise approach: they need as many iterations as the length of the maximum large itemset. To make matter worse, they impose a synchronization in every iteration which would cause serious I/O contention on shared-memory parallel system. An adaptive asynchronous parallel mining algorithm APM has been proposed for SMP. All processors generate candidates dynamically and count itemset supports independently without synchronization. Two optimization techniques have been proposed for the reduction of database scan...
The problem of mining hidden associations present in the large amounts of data has seen widespread a...
Association rule discovery techniques have gradually been adapted to parallel systems in order to t...
Apriori Algorithms are used on very large data sets with high dimensionality. Therefore parallel com...
Mining association rules from large databases is an important problem in data mining. There is a nee...
All current parallel algorithms for mining the association rules follow the conventional level-wise ...
Data mining is an emerging research area, whose goal is to extract significant patterns or interesti...
Data mining is an emerging research area, whose goal is to extract significant patterns or interesti...
In this paper we consider the problem of parallel mining of association rules on a shared-memory mul...
One of the important problems in data mining is discovering association rules from databases of tran...
Association rule mining is an important new problem in data mining. It has crucial applications in d...
An efficient parallel algorithm FPM(Fast Parallel Mining) for mining association rules on a shared-n...
Association rule mining recently attracted strong attention. Usually, the classification hierarchy o...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1998. Simultaneously published...
Mining for association rules between items in a large database of sales transactions has been descri...
AbstractNow days due to rapid growth of data in organizations, extensive data processing is a centra...
The problem of mining hidden associations present in the large amounts of data has seen widespread a...
Association rule discovery techniques have gradually been adapted to parallel systems in order to t...
Apriori Algorithms are used on very large data sets with high dimensionality. Therefore parallel com...
Mining association rules from large databases is an important problem in data mining. There is a nee...
All current parallel algorithms for mining the association rules follow the conventional level-wise ...
Data mining is an emerging research area, whose goal is to extract significant patterns or interesti...
Data mining is an emerging research area, whose goal is to extract significant patterns or interesti...
In this paper we consider the problem of parallel mining of association rules on a shared-memory mul...
One of the important problems in data mining is discovering association rules from databases of tran...
Association rule mining is an important new problem in data mining. It has crucial applications in d...
An efficient parallel algorithm FPM(Fast Parallel Mining) for mining association rules on a shared-n...
Association rule mining recently attracted strong attention. Usually, the classification hierarchy o...
Thesis (Ph. D.)--University of Rochester. Dept. of Computer Science, 1998. Simultaneously published...
Mining for association rules between items in a large database of sales transactions has been descri...
AbstractNow days due to rapid growth of data in organizations, extensive data processing is a centra...
The problem of mining hidden associations present in the large amounts of data has seen widespread a...
Association rule discovery techniques have gradually been adapted to parallel systems in order to t...
Apriori Algorithms are used on very large data sets with high dimensionality. Therefore parallel com...