AR (Association rule) is considered to be one of the models for data mining. With the growth of datasets, conventional association rules are not suitable for big data mining, which has aroused a large number of scholars' interest in algorithm innovation. This study aims to design an optimization parallel association rules mining algorithm based on MapReduce, named as PMRARIM-IEG algorithm, to deal with problems such as the excessive space occupied by the CanTree (CanTreeCanonical order Tree), the inability to dynamically set the support threshold, and the time-consuming data transmission in the Map and Reduce phases. Firstly, a structure called SIM-IE (similar items merging based on information entropy) strategy is adopted for reducing the space occupation of the CanTree effectively. Then, a DST-GA (dynamic support threshold obtaining using genetic algorithm) is proposed to obtain the relatively optimal dynamic support threshold in the big data environment. Finally, in the process of MapReduce parallel, a LZO (Lempel-Ziv-Oberhumer) data compression strategy is used to compress the output data of the Map stage, which improves the speed of the data transmission. We compared the PMRARIM-IEG algorithm with other algorithms on five datasets, including Wikipedia , LiveJournal, com-amazon, kosarak, and webdocs. The experimental results obtained demonstrate that the proposed algorithm, PMRARIM-IEG, not only reduces the space and time complexity, but also obtains a well-performing speed-up ratio in a big data environment.
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.