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Approximation Capabilities of Hierarchical Neural- Fuzzy Systems for Function Approximation on Discrete Spaces
Author(s) -
XiaoJun Zeng,
John Keane,
John Y. Goulermas,
Panos Liatsis
Publication year - 2005
Publication title -
international journal of computational intelligence research
Language(s) - English
Resource type - Journals
eISSN - 0974-1259
pISSN - 0973-1873
DOI - 10.5019/j.ijcir.2005.21
Subject(s) - computer science , function approximation , fuzzy logic , function (biology) , artificial neural network , artificial intelligence , evolutionary biology , biology
This paper investigates function approximation on discrete input spaces by both neural networks and neural- fuzzy systems. Rather than use existing neural networks for function approximation on continuous input spaces, this paper proposes, based on a hierarchical systematic perspective, four simplified approximation schemes: simplified neural networks, extended simplified neural networks, simple hierarchical neural- fuzzy systems and hierarchical neural-fuzzy systems. Each scheme is proven to be a universal approximator (i.e., each can approximate any function on discrete input spaces to any degree of accuracy). The results provide both several new and simpler approximation schemes for function approximation on discrete spaces and show that there exist simpler and more effective methods for function approximation on discrete spaces compared with continuous spaces.

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