Abstract:
Automatic designing of both architecture and parameters of an artificial neural network is an important problem. This paper introduces a new approach for designing artifi...Show MoreMetadata
Abstract:
Automatic designing of both architecture and parameters of an artificial neural network is an important problem. This paper introduces a new approach for designing artificial neural networks using multi expression programming (MEP-NN). The approach employs the multi expression programming to evolve the architecture and the parameters encoded in the neural network simultaneously. Based on the predefined instruction sets, a MEP-NN model can be created and evolved. This framework allows input variables selection, over-layer connections and different activation functions for the various nodes involved. The performance and effectiveness of the proposed method are evaluated using stock market forecasting problems and compared with the related methods.
Published in: 2008 Chinese Control and Decision Conference
Date of Conference: 02-04 July 2008
Date Added to IEEE Xplore: 12 August 2008
ISBN Information:
ISSN Information:
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- IEEE Keywords
- Index Terms
- Neural Network ,
- Activation Function ,
- Performance Of Method ,
- Artificial Neural Network ,
- Selection Of Input Variables ,
- Root Mean Square Error ,
- Training Data ,
- Learning Algorithms ,
- Support Vector Machine ,
- Gene Regulatory Networks ,
- Hidden Layer ,
- Input Layer ,
- Training Stage ,
- Feed-forward Network ,
- Stock Price ,
- Artificial Neural Network Model ,
- Chromosome Structure ,
- Stock Index ,
- Random Search ,
- Traditional Neural Network ,
- Genetic Operators ,
- Crossover Process ,
- Parental Chromosomes ,
- Node Weights
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Neural Network ,
- Activation Function ,
- Performance Of Method ,
- Artificial Neural Network ,
- Selection Of Input Variables ,
- Root Mean Square Error ,
- Training Data ,
- Learning Algorithms ,
- Support Vector Machine ,
- Gene Regulatory Networks ,
- Hidden Layer ,
- Input Layer ,
- Training Stage ,
- Feed-forward Network ,
- Stock Price ,
- Artificial Neural Network Model ,
- Chromosome Structure ,
- Stock Index ,
- Random Search ,
- Traditional Neural Network ,
- Genetic Operators ,
- Crossover Process ,
- Parental Chromosomes ,
- Node Weights
- Author Keywords