articleMar 1, 2012Closed access

Random search for hyper-parameter optimization

Université de Montréal

Abstract

Grid search and manual search are the most widely used strategies for hyper-parameter optimization. This paper shows empirically and theoretically that randomly chosen trials are more efficient for hyper-parameter optimization than trials on a grid. Empirical evidence comes from a comparison with a large previous study that used grid search and manual search to configure neural networks and deep belief networks. Compared with neural networks configured by a pure grid search, we find that random search over the same domain is able to find models that are as good or better within a small fraction of the computation time. Granting random search the same computational budget, random search finds better models by…

Citation impact

7,928
total citations
FWCI
121.50
Percentile
100%
References
35
Citations per year

Authors

2

Topics & keywords

Keywords
  • Hyperparameter optimization
  • Random search
  • Computer science
  • Grid
  • Set (abstract data type)
  • Artificial neural network
  • Fraction (chemistry)
  • Search algorithm
No related works found for this paper.