Incremental learning of fuzzy basis function networks with a modified version of vector quantization
Authors |
Edwin Lughofer Ulrich Bodenhofer |
Title | Incremental learning of fuzzy basis function networks with a modified version of vector quantization |
Booktitle | Proc. 11th Int. Conf. on Information Processing and Management of Uncertainty in Knowledge-Based Systems (IMPU 2006) |
Type | in proceedings |
Publisher | Éditions E.D.K. |
Volume | I |
Address | Paris, France |
Department | IDM |
ISBN | 2-84254-112-X |
Month | July |
Year | 2006 |
Pages | 56-63 |
Abstract | In this paper an algorithm for data-driven incrementallearning of fuzzy basis function networks is presented. A modified version of vector quantization is exploited for rule evolution and an incremental learning of the rules' premise parts. The premisepart learning is connected in a stable manner with a recursive learning of rule consequent functions possessing linear parameters. The paper is concluded with an evaluation of the proposed algorithm on high-dimensional measurement data for engine test benches. |