Algorithms for Hyper-Parameter Optimization
pected improvement criterion. Random search has been shown to be sufficiently efficient for learning neural networks for several datasets, but we show it is unreli-able for training DBNs. The sequential algorithms are applied to the most difficult DBN learning problems from [1] and find significantly better results than the best
Improvement, Parameters, Algorithm, Optimization, Hyper, Algorithms for hyper parameter optimization
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