[[abstract]]Existing parallel algorithms for association rule mining have a large inter-site communication cost or require a large amount of space to maintain the local support counts of a large number of candidate sets. This study proposes a de-clustering approach for distributed architectures, which eliminates the inter-site communication cost, for most of the influential association rule mining algorithms. To de-cluster the database into similar partitions, an efficient algorithm is developed to approximate the shortest spanning path (SSP) to link transaction data together. The SSP obtained is then used to evenly de-cluster the transaction data into subgroups. The proposed approach guarantees that all subgroups are similar to each other ...
Many sequential algorithms have been proposed for mining of association rules. However, very little ...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
In this paper we propose two new parallel formulations of the Apriori algorithm that is used for com...
[[abstract]]Most of the association rule mining algorithms suffer from the time-consuming elaboratio...
Most of the association rule mining algorithms suffer from the time-consuming elaboration on finding...
Abstract — Association rule mining is a way to find interesting associations among different large s...
AbstractThe extraction of patterns and rules from large distributed databases through existing Distr...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
In distributed association rule mining algorithm, one of the major and challenging hindrances is to ...
In distributed association rule mining algorithm, one of the major and challenging hindrances is to ...
Abstract: Data mining is used to extract important knowledge from large datasets, but sometimes thes...
Abstract: The existence of many large transactions distributed databases with high data schemas, the...
In this paper, we present a new algorithm called Distributed data access control algorithm using ass...
AbstractAssociation Rule Mining (ARM) is a popular and well researched method for discovering intere...
Association rule mining is an important new problem in data mining. It has crucial applications in d...
Many sequential algorithms have been proposed for mining of association rules. However, very little ...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
In this paper we propose two new parallel formulations of the Apriori algorithm that is used for com...
[[abstract]]Most of the association rule mining algorithms suffer from the time-consuming elaboratio...
Most of the association rule mining algorithms suffer from the time-consuming elaboration on finding...
Abstract — Association rule mining is a way to find interesting associations among different large s...
AbstractThe extraction of patterns and rules from large distributed databases through existing Distr...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
In distributed association rule mining algorithm, one of the major and challenging hindrances is to ...
In distributed association rule mining algorithm, one of the major and challenging hindrances is to ...
Abstract: Data mining is used to extract important knowledge from large datasets, but sometimes thes...
Abstract: The existence of many large transactions distributed databases with high data schemas, the...
In this paper, we present a new algorithm called Distributed data access control algorithm using ass...
AbstractAssociation Rule Mining (ARM) is a popular and well researched method for discovering intere...
Association rule mining is an important new problem in data mining. It has crucial applications in d...
Many sequential algorithms have been proposed for mining of association rules. However, very little ...
Clustering is an activity of finding abstractions from data [1]. These abstractions are mainly used ...
In this paper we propose two new parallel formulations of the Apriori algorithm that is used for com...