Optimizing deep learning hyper-parameters through an evolutionary algorithm

Published: Nov 15, 2015
Abstract
There has been a recent surge of success in utilizing Deep Learning (DL) in imaging and speech applications for its relatively automatic feature generation and, in particular for convolutional neural networks (CNNs), high accuracy classification abilities. While these models learn their parameters through data-driven methods, model selection (as architecture construction) through hyper-parameter choices remains a tedious and highly intuition...
Paper Details
Title
Optimizing deep learning hyper-parameters through an evolutionary algorithm
Published Date
Nov 15, 2015
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