DocumentCode :
2663056
Title :
Optimization for problem classes-neural networks that learn to learn
Author :
Husken, Michael ; Gayko, Jens E. ; Sendhoff, Bernhard
Author_Institution :
Inst. fur Neuroinf., Ruhr-Univ., Bochum, Germany
fYear :
2000
fDate :
2000
Firstpage :
98
Lastpage :
109
Abstract :
The main focus of the optimization of artificial neural networks has been the design of a problem dependent network structure in order to reduce the model complexity and to minimize the model error. Driven by a concrete application we identify in this paper another desirable property of neural networks-the ability of the network to efficiently solve related problems denoted as a class of problems. In a more theoretical framework the aim is to develop neural networks for adaptability-networks that learn (during evolution) to learn (during operation). Evolutionary algorithms have turned out to be a robust method for the optimization of neural networks. As this process is time consuming, it is therefore also from the perspective of efficiency desirable to design structures that are applicable to many related problems. In this paper, two different approaches to solve this problem are studied, called ensemble method and generation method. We empirically show that an averaged Lamarckian inheritance seems to be the most efficient way to optimize networks for problem classes, both for artificial regression problems as well as for real-world system state diagnosis problems
Keywords :
evolutionary computation; learning (artificial intelligence); neural nets; problem solving; Lamarckian inheritance; adaptability; artificial neural networks; ensemble method; evolutionary algorithms; generation method; learning; system state diagnosis problems; Artificial neural networks; Biological system modeling; Concrete; Design optimization; Europe; Evolution (biology); Evolutionary computation; Neural networks; Research and development; Robustness;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Combinations of Evolutionary Computation and Neural Networks, 2000 IEEE Symposium on
Conference_Location :
San Antonio, TX
Print_ISBN :
0-7803-6572-0
Type :
conf
DOI :
10.1109/ECNN.2000.886225
Filename :
886225
Link To Document :
بازگشت