Article ID: | iaor19982394 |
Country: | Netherlands |
Volume: | 18 |
Issue: | 3/4 |
Start Page Number: | 317 |
End Page Number: | 325 |
Publication Date: | Nov 1996 |
Journal: | Decision Support Systems |
Authors: | Hansen James V., Meservy Rayman D. |
Keywords: | genetic algorithms |
This paper reports a study unifying optimization by genetic algorithm with a generalized regression neural network. Experiments compare hill-climbing optimization with that of a genetic algorithm, both in conjunction with a generalized regression neural network. Controlled data with nine independent variables are used in combination with conjunctive and compensatory decision forms, having zero percent and 10 percent noise levels. Results consistently favor the GRNN unified with the genetic algorithm.