In distributed association rule mining algorithm, one of the major and challenging hindrances is to reduce the communication overhead. Data sites are required to exchange lot of information in the data mining process which may generates massive communication overhead. In this paper we propose an association rule mining algorithm which minimizes the communication overhead among the participating data sites. Instead of transmitting all itemsets and their counts, we propose to transmit a binary vector and count of only frequently large itemsets. Message Passing Interface (MPI) technique is exploited to avoid broadcasting among data sites. Performance study shows that the proposed algorithm performs better than two other well known algorithms k...
Association rule mining is an important new problem in data mining. It has crucial applications in d...
We propose a novel pattern tree called Pattern Count tree (PC- tree) which is a complete and compact...
Nowadays, there is an increasing demand in mining interesting patterns from the big data. The proces...
In distributed association rule mining algorithm, one of the major and challenging hindrances is to ...
Abstract- Data mining combines machine learning, statistics and visualization techniques to discover...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
AbstractAssociation Rule Mining (ARM) is a popular and well researched method for discovering intere...
In this paper, we present a new algorithm called Distributed data access control algorithm using ass...
Abstract: Data mining is used to extract important knowledge from large datasets, but sometimes thes...
[[abstract]]Existing parallel algorithms for association rule mining have a large inter-site communi...
AbstractThe extraction of patterns and rules from large distributed databases through existing Distr...
We propose a protocol for secure mining of association rules in horizontally distributed databases. ...
Abstract: Data mining is the most fast growing area today which is used to extract important knowled...
Abstract — Association rule mining is a way to find interesting associations among different large s...
In this paper we propose two new parallel formulations of the Apriori algorithm that is used for com...
Association rule mining is an important new problem in data mining. It has crucial applications in d...
We propose a novel pattern tree called Pattern Count tree (PC- tree) which is a complete and compact...
Nowadays, there is an increasing demand in mining interesting patterns from the big data. The proces...
In distributed association rule mining algorithm, one of the major and challenging hindrances is to ...
Abstract- Data mining combines machine learning, statistics and visualization techniques to discover...
With the existence of many large transaction databases, the huge amounts of data, the high scalabili...
AbstractAssociation Rule Mining (ARM) is a popular and well researched method for discovering intere...
In this paper, we present a new algorithm called Distributed data access control algorithm using ass...
Abstract: Data mining is used to extract important knowledge from large datasets, but sometimes thes...
[[abstract]]Existing parallel algorithms for association rule mining have a large inter-site communi...
AbstractThe extraction of patterns and rules from large distributed databases through existing Distr...
We propose a protocol for secure mining of association rules in horizontally distributed databases. ...
Abstract: Data mining is the most fast growing area today which is used to extract important knowled...
Abstract — Association rule mining is a way to find interesting associations among different large s...
In this paper we propose two new parallel formulations of the Apriori algorithm that is used for com...
Association rule mining is an important new problem in data mining. It has crucial applications in d...
We propose a novel pattern tree called Pattern Count tree (PC- tree) which is a complete and compact...
Nowadays, there is an increasing demand in mining interesting patterns from the big data. The proces...