A novel parallel algorithm for frequent itemsets mining in massive small files datasets


Autoria(s): Xia, D.; Rong, Z.; Zhou, Y.; Li, Y.; Shen, Y.; Zhang, Z.
Data(s)

01/01/2014

Resumo

In big data analysis, frequent itemsets mining plays a key role in mining associations, correlations and causality. Since some traditional frequent itemsets mining algorithms are unable to handle massive small files datasets effectively, such as high memory cost, high I/O overhead, and low computing performance, we propose a novel parallel frequent itemsets mining algorithm based on the FP-Growth algorithm and discuss its applications in this paper. First, we introduce a small files processing strategy for massive small files datasets to compensate defects of low read-write speed and low processing efficiency in Hadoop. Moreover, we use MapReduce to redesign the FP-Growth algorithm for implementing parallel computing, thereby improving the overall performance of frequent itemsets mining. Finally, we apply the proposed algorithm to the association analysis of the data from the national college entrance examination and admission of China. The experimental results show that the proposed algorithm is feasible and valid for a good speedup and a higher mining efficiency, and can meet the actual requirements of frequent itemsets mining for massive small files datasets. © 2014 ISSN 2185-2766.

Identificador

http://hdl.handle.net/10536/DRO/DU:30072371

Idioma(s)

eng

Publicador

ICIC International

Relação

http://dro.deakin.edu.au/eserv/DU:30072371/zhang-novelparallelalgorithm-2014.pdf

Direitos

2014, ICIC International

Palavras-Chave #Big data analysis #Frequent itemsets mining #Hadoop MapReduce #Parallel FP-growth #Small files problem
Tipo

Journal Article