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Conference Paper A Study on Information Granular-Driven Polynomial Neural Networks
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Authors
Byoung-Jun Park, Eun-Hye Jang, Sang-Hyebo Kim, Chul Huh, Myung-Ae Chung
Issue Date
2014-05
Citation
International Conference on Information Science and Applications (ICISA) 2014, pp.1-4
Language
English
Type
Conference Paper
DOI
https://dx.doi.org/10.1109/ICISA.2014.6847343
Abstract
In this study, we introduce a new design methodology of information granular-driven polynomial neural networks (IgPNNs) that is based on multi-layer perceptron with Context-based Polynomial Neurons (CPNs) or Polynomial Neurons (PNs). Our main objective is to develop a methodological design strategy of IgPNNs as follows: (a) The 1st layer of the proposed network consists of Context-based Polynomial Neuron (CPN). In here, CPN is fully reflective of the structure encountered in numeric data which are granulated with the aid of Context- based Fuzzy C-Means (C-FCM) clustering method. The context-based clustering supporting the design of information granules is completed in the space of the input data while the build of the clusters is guided by a collection of some predefined fuzzy sets defined in the output space. (b) The proposed design procedure being applied at each layer of IgPNN leads to the selection of preferred nodes of the network (CPNs or PNs) whose local characteristics can be easily adjusted. These options contribute to the flexibility as well as simplicity and compactness of the resulting architecture of the network. For the evaluation of performance of the proposed IgPNNs, we describe a detailed characteristic of the proposed model using a well-known learning machine data. © 2014 IEEE.
KSP Keywords
Clustering method, Design procedure, Information granules, Learning Machine, Local Characteristics, Machine data, Methodological design, Numeric data, Polynomial neural networks, Proposed model, context-based clustering