Title
Adaptive rough radial basis function neural network with prototype outlier removal.
Abstract
A new rough neural network (RNN)-based model is proposed in this paper. The radial basis function network with dynamic decay adjustment (RBFNDDA) is applied to learn information directly from a data set and group it in terms of prototypes. Then, a neighborhood rough set-based procedure is applied to detect prototype outliers. This hybrid model is named rough RBFNDDA1. However, the removal of all outliers may cause information loss because some outliers may represent rare yet useful information in a classification task. As such, the parameters of a prototype outlier, i.e., its radius and weight, are exploited to gauge whether the information encoded by the prototype is meaningful. This hybrid model is named rough RBFNDDA2. The results from a benchmark experimental study show that rough RBFNDDA2 can retain meaningful prototype outliers and, at the same time, significantly reduce the number of prototypes from the original RBFNDDA model while maintaining classification accuracy. A real-world application in a power generation plant is used to evaluate and demonstrate the effectiveness of the proposed model.
Year
DOI
Venue
2019
10.1016/j.ins.2019.07.066
Information Sciences
Keywords
Field
DocType
Radial basis function network,Dynamic decay adjustment,Neighborhood rough set,Outliers
Outlier removal,Information loss,Radial basis function network,Pattern recognition,Radial basis function neural,Outlier,Rough set,Artificial intelligence,Artificial neural network,Gauge (firearms),Mathematics,Machine learning
Journal
Volume
ISSN
Citations 
505
0020-0255
1
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Pey Yun Goh111.36
Shing Chiang Tan212218.99
Wooi Ping Cheah3368.03
Chee Peng Lim41459122.04