Hybrid optimization technique for artificial neural networks design. Zanchettin, C. & Ludermir, T. In ICEIS 2009 - 11th International Conference on Enterprise Information Systems, Proceedings, volume AIDSS, 2009.
abstract   bibtex   
In this paper a global and local optimization method is presented. This method is based on the integration of the heuristic Simulated Annealing, Tabu Search, Genetic Algorithms and Backpropagation. The performance of the method is investigated in the optimization of Multi-layer Perceptron artificial neural network architecture and weights. The heuristics perform the search in a constructive way and based on the pruning of irrelevant connections among the network nodes. Experiments demonstrated that the method can also be used for relevant feature selection. Experiments are performed with four classification and one prediction datasets.
@inproceedings{
 title = {Hybrid optimization technique for artificial neural networks design},
 type = {inproceedings},
 year = {2009},
 keywords = {Artificial neural networks,Experimental design,Global optimization,Relevant feature selection},
 volume = {AIDSS},
 id = {dc0c906d-2a03-38e2-8725-885d2bac908f},
 created = {2019-02-14T18:02:00.092Z},
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 profile_id = {74e7d4ea-3dac-3118-aab9-511a5b337e8f},
 last_modified = {2019-02-14T18:02:00.092Z},
 read = {false},
 starred = {false},
 authored = {true},
 confirmed = {false},
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 abstract = {In this paper a global and local optimization method is presented. This method is based on the integration of the heuristic Simulated Annealing, Tabu Search, Genetic Algorithms and Backpropagation. The performance of the method is investigated in the optimization of Multi-layer Perceptron artificial neural network architecture and weights. The heuristics perform the search in a constructive way and based on the pruning of irrelevant connections among the network nodes. Experiments demonstrated that the method can also be used for relevant feature selection. Experiments are performed with four classification and one prediction datasets.},
 bibtype = {inproceedings},
 author = {Zanchettin, C. and Ludermir, T.B.},
 booktitle = {ICEIS 2009 - 11th International Conference on Enterprise Information Systems, Proceedings}
}

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