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PKDD
2015
Springer

Hyperparameter Optimization with Factorized Multilayer Perceptrons

8 years 8 months ago
Hyperparameter Optimization with Factorized Multilayer Perceptrons
In machine learning, hyperparameter optimization is a challenging task that is usually approached by experienced practitioners or in a computationally expensive brute-force manner such as grid-search. Therefore, recent research proposes to use observed hyperparameter performance on already solved problems (i.e. data sets) in order to speed up the search for promising hyperparameter configurations in the sequential model based optimization framework. In this paper, we propose multilayer perceptrons as surrogate models as they are able to model highly nonlinear hyperparameter response surfaces. However, since interactions of hyperparameters, data sets and metafeatures are only implicitly learned in the subsequent layers, we improve the performance of multilayer perceptrons by means of an explicit factorization of the interaction weights and call the resulting model a factorized multilayer perceptron. Additionally, we evaluate different ways of obtaining predictive uncertainty, which is ...
Nicolas Schilling, Martin Wistuba, Lucas Drumond,
Added 16 Apr 2016
Updated 16 Apr 2016
Type Journal
Year 2015
Where PKDD
Authors Nicolas Schilling, Martin Wistuba, Lucas Drumond, Lars Schmidt-Thieme
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