Title
Parallelizing Gene Expression Programming Algorithm in Enabling Large-Scale Classification.
Abstract
As one of the most effective function mining algorithms, Gene Expression Programming (GEP) algorithm has been widely used in classification, pattern recognition, prediction, and other research fields. Based on the self-evolution, GEP is able to mine an optimal function for dealing with further complicated tasks. However, in big data researches, GEP encounters low efficiency issue due to its long time mining processes. To improve the efficiency of GEP in big data researches especially for processing large-scale classification tasks, this paper presents a parallelized GEP algorithm using MapReduce computing model. The experimental results show that the presented algorithm is scalable and efficient for processing large-scale classification tasks.
Year
DOI
Venue
2017
10.1155/2017/5081526
Scientific Programming
Field
DocType
Volume
Gene expression programming,Data mining,Computer science,Algorithm,Artificial intelligence,Big data,Machine learning,Scalability
Journal
2017
ISSN
Citations 
PageRank 
1058-9244
1
0.36
References 
Authors
8
4
Name
Order
Citations
PageRank
Xu, Lixiong1263.39
Yuan Huang2127.67
Xiaodong Shen3869.75
yang liu415111.93