Parallel apriori based distributed association rule mining: A comprehensive survey

Publications

Parallel apriori based distributed association rule mining: A comprehensive survey

Year : 2018

Publisher : Institute of Electrical and Electronics Engineers Inc.

Source Title : Proceedings - 2018 4th IEEE International Conference on Research in Computational Intelligence and Communication Networks, ICRCICN 2018

Document Type :

Abstract

Association rule mining (ARM) has been paid more attention of both data mining users and database researchers in the last decade. Generation of various association rules from large distributed databases is the crucial task due to its intrinsic distribution of data sources. Identifying these type of distributed data sources requires a deep knowledge on data mining and planning for deployment in distributed environment. In this paper, a survey of the distributed framework for ARM is presented. It is observed that the parallelized nature of Apriori, Hadoop, MapReduce and Spark proves to be very efficient in Distributed association rule mining (DARM) environment. We expect that, the comprehensive review, references cited will convey foremost hypothetical issues and a guideline to the researcher in interesting research direction.