Title of article :
Polynomial-based radial basis function neural networks (P-RBF NNs) realized with the aid of particle swarm optimization
Author/Authors :
Oh، نويسنده , , Sung-Kwun and Kim، نويسنده , , Wook-Dong and Pedrycz، نويسنده , , Witold and Park، نويسنده , , Byoung-Jun، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
In this study, we design polynomial-based radial basis function neural networks (P-RBF NNs) based on a fuzzy inference mechanism. The essential design parameters (including learning rate, momentum coefficient and fuzzification coefficient of the underlying clustering method) are optimized by means of the particle swarm optimization. The proposed P-RBF NNs dwell upon structural findings about training data that are expressed in terms of a partition matrix resulting from fuzzy clustering in this case being the fuzzy C-means (FCM). The network is of functional nature as the weights between the hidden layer and the output are some polynomials. The use of the polynomial weights becomes essential in capturing the nonlinear nature of data encountered in regression or classification problems. From the perspective of linguistic interpretation, the proposed network can be expressed as a collection of “if–then” fuzzy rules. The architecture of the networks discussed here embraces three functional modules reflecting the three phases of input–output mapping realized in rule-based architectures, namely condition formation, conclusion creation, and aggregation. The proposed classifier is applied to some synthetic and machine learning datasets, and its results are compared with those reported in the previous studies.
Keywords :
Polynomial Neural Networks , Radial basis function neural networks , Pattern classification , Fuzzy clustering , particle swarm optimization
Journal title :
FUZZY SETS AND SYSTEMS
Journal title :
FUZZY SETS AND SYSTEMS