Authors
Daan Wierstra, Tom Schaul, Tobias Glasmachers, Yi Sun, Jan Peters, Jürgen Schmidhuber
Publication date
2014/1/1
Journal
The Journal of Machine Learning Research
Volume
15
Issue
1
Pages
949-980
Publisher
JMLR. org
Description
This paper presents Natural Evolution Strategies (NES), a recent family of black-box optimization algorithms that use the natural gradient to update a parameterized search distribution in the direction of higher expected fitness. We introduce a collection of techniques that address issues of convergence, robustness, sample complexity, computational complexity and sensitivity to hyperparameters. This paper explores a number of implementations of the NES family, such as general-purpose multi-variate normal distributions and separable distributions tailored towards search in high dimensional spaces. Experimental results show best published performance on various standard benchmarks, as well as competitive performance on others.
Total citations
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Scholar articles
D Wierstra, T Schaul, T Glasmachers, Y Sun, J Peters… - The Journal of Machine Learning Research, 2014