- Title
- Combination strategies for finding optimal neural network architecture and weights
- Creator
- Verma, Brijesh; Ghosh, Ranadhir
- Date
- 2004
- Type
- Text; Book chapter
- Identifier
- http://researchonline.federation.edu.au/vital/access/HandleResolver/1959.17/55387
- Identifier
- vital:2754
- Identifier
- ISBN:9783540211235
- Abstract
- The chapter presents a novel neural learning methodology by using different combination strategies for finding architecture and weights. The methodology combines evolutionary algorithms with direct/matrix solution methods such as Gram-Schmidt, singular value decomposition, etc., to achieve optimal weights for hidden and output layers. The proposed method uses evolutionary algorithms in the first layer and the least square method (LS) in the second layer of the ANN. The methodology also finds optimum number of hidden neurons and weights using hierarchical combination strategies. The chapter explores all different facets of the proposed method in terms of classification accuracy, convergence property, generalization ability, time and memory complexity. The learning methodology has been tested using many benchmark databases such as XOR, 10 bit odd parity, handwriting characters from CEDAR, breast cancer and heart disease from UCI machine learning repository. The experimental results, detailed discussion and analysis are included in the chapter.
- Publisher
- London Springer
- Relation
- Neural information processing : Research and development Chapter p. 294-319
- Rights
- Copyright Springer
- Rights
- This metadata is freely available under a CCO license
- Subject
- Neural network architecture; Learning algorithms; Evolutionary learning algorithms; Direct solution methods
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