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PKDD
2015
Springer

Learning Data Set Similarities for Hyperparameter Optimization Initializations

8 years 8 months ago
Learning Data Set Similarities for Hyperparameter Optimization Initializations
Abstract. Current research has introduced new automatic hyperparameter optimization strategies that are able to accelerate this optimization process and outperform manual and grid or random search in terms of time and prediction accuracy. Currently, meta-learning methods that transfer knowledge from previous experiments to a new experiment arouse particular interest among researchers because it allows to improve the hyperparameter optimization. In this work we further improve the initialization techniques for sequential model-based optimization, the current state of the art hyperparameter optimization framework. Instead of using a static similarity prediction between data sets, we use the few evaluations on the new data sets to create new features. These features allow a better prediction of the data set similarity. Furthermore, we propose a technique that is inspired by active learning. In contrast to the current state of the art, it does not greedily choose the best hyperparameter co...
Martin Wistuba, Nicolas Schilling, Lars Schmidt-Th
Added 16 Apr 2016
Updated 16 Apr 2016
Type Journal
Year 2015
Where PKDD
Authors Martin Wistuba, Nicolas Schilling, Lars Schmidt-Thieme
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