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Unbounded Bayesian Optimization via Regularization

About

Bayesian optimization has recently emerged as a popular and efficient tool for global optimization and hyperparameter tuning. Currently, the established Bayesian optimization practice requires a user-defined bounding box which is assumed to contain the optimizer. However, when little is known about the probed objective function, it can be difficult to prescribe such bounds. In this work we modify the standard Bayesian optimization framework in a principled way to allow automatic resizing of the search space. We introduce two alternative methods and compare them on two common synthetic benchmarking test functions as well as the tasks of tuning the stochastic gradient descent optimizer of a multi-layered perceptron and a convolutional neural network on MNIST.

Bobak Shahriari, Alexandre Bouchard-C\^ot\'e, Nando de Freitas• 2015

Related benchmarks

TaskDatasetResultRank
Black-box OptimizationHartmann3
Average CPU Time (s)0.76
13
Black-box OptimizationBeale
Average CPU Time (s)0.37
7
Black-box OptimizationHartmann6
Average CPU Time (s)0.91
7
Black-box OptimizationLevy d=20
Average CPU Time (s)6.34
7
Black-box OptimizationAckley d=20
Average CPU Time (s)9.13
7
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