Chen et al., 1997 - Google Patents
Evolutionary learning with a neuromolecular architecture: a biologically motivated approach to computational adaptabilityChen et al., 1997
View PDF- Document ID
- 9894668360966893814
- Author
- Chen J
- Conrad M
- Publication year
- Publication venue
- Soft Computing
External Links
Snippet
The effectiveness of evolutionary learning depends both on the variation-selection search operations used and on the structure-function relations of the organization to which these operations are applied. Some organizations—in particular those that occur in biology—are …
- 230000003585 interneuronal 0 abstract description 2
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