Fine-tuning deep belief networks using cuckoo search
Abstract
In the last few years, metaheuristic-driven optimization has been employed to address deep belief network (DBN) model selection, since it provides simple and elegant solutions in a wide range of applications. In this work, we introduce the well-known cuckoo search to fine-tune DBN parameters and validate its effectiveness by comparing it with harmony search, improved harmony search, and particle swarm optimization. The experimental results have been carried out in two public datasets using DBNs with a different number of layers concerning the task of binary image reconstruction.
How to cite this document
Rodrigues, D.; Yang, X. S.; Papa, J. P.. Fine-tuning deep belief networks using cuckoo search. Bio-Inspired Computation and Applications in Image Processing, p. 47-59. Available at: <http://hdl.handle.net/11449/220834>.
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English
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