Searching nonlinear functions for high values (Q1123828)
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scientific article; zbMATH DE number 4110521
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Searching nonlinear functions for high values |
scientific article; zbMATH DE number 4110521 |
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Searching nonlinear functions for high values (English)
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1989
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One way of describing complex systems like adaptive nonlinear networks (ANN) is to represent the ANN's component structures (be them rules, strategies, chromosomes, or the like) as a collection of k-bit strings. The author is concerned with modelling the ANN's search as a sampling on the space of k-bit strings using a probability distribution p(t) - which changes as time t increases. Each k-bit x represents a structure to be tried and a real-valued function u(x) can be helpful in biasing the distribution p(t) to direct the search. The idea is to ``re-represent'' the information given by u using a hyperplane transformation. The problem then is to design a feasible algorithm that (as information accumulates) provides the biases suggested by the hyperplane transform. In this respect, the author shows that genetic algorithms [see e.g. \textit{J. H. Holland} et al., Induction: Processes of inference, learning and discovery. MIT Press (1986), \textit{J. J. Grefenstette}, Genetic algorithms and their applications. (1987)], viewed as hyperplane-directed search procedures, rapidly provide the biasing implied by the hyperplane transform without explicitly carrying out the calculations involved.
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adaptive nonlinear networks
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ANN
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bit strings
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hyperplane transformation
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algorithm
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genetic algorithms
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hyperplane-directed search procedures
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