Learning by Error-driven Decomposition
Conference Paper, Proceedings of International Conference on Artificial Neural Networks (ICANN '91), June, 1991
Abstract
In this paper we describe a new selforganizing decomposition technique for learning high-dimensional mappings. Problem decomposition is performed in an error-driven manner, such that the resulting subtasks (patches) are equally well approximated. Our method combines an unsupervised learning scheme (Feature Maps [Koh84]) with a nonlinear approximator (Backpropagation [RHW86]). The resulting learning system is more stable and effective in changing environments than plain backpropagation and much more powerful than extended feature maps as proposed by [RS88, RMS89]. Extensions of our method give rise to active exploration strategies for autonomous agents facing unknown environments.
BibTeX
@conference{Fox-1991-15803,author = {Dieter Fox and V. Heinze and K. Moeller and Sebastian Thrun and G. Veenker},
title = {Learning by Error-driven Decomposition},
booktitle = {Proceedings of International Conference on Artificial Neural Networks (ICANN '91)},
year = {1991},
month = {June},
editor = {Simula, Kohonen},
publisher = {Elsevier.},
}
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