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Surrogate Model Based Hyperparameter Tuning for Deep Learning with SPOT
A surrogate model based hyperparameter tuning approach for deep learning is
presented. This article demonstrates how the architecture-level parameters
(hyperparameters) of deep learning models that were implemented in
Keras/tensorflow can be optimized. The implementation of the tuning procedure
is 100% accessible from R, the software environment for statistical computing.
With a few lines of code, existing R packages (tfruns and SPOT) can be combined
to perform hyperparameter tuning. An elementary hyperparameter tuning task
(neural network and the MNIST data) is used to exemplify this approachComment: version