https://dl.acm.org/citation.cfm?id=2834896
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 driven task. To address this, Multi-node Evolutionary Neural Networks for Deep Learning (MENNDL) is
proposed as a method for automating network selection on computational
clusters through hyper-parameter optimization performed via genetic
algorithms.
No comments:
Post a Comment