Stochastic Control: from Gradient Methods and Dynamic Programming to Statistical Learning.

Authors
Publication date
2020
Publication type
Other
Summary In this article the authors wish to contribute to the evaluation of statistical learning for stochastic control. We will review the well known methods for stochastic control and compare their numerical performance to those of a neural network. This will be done on a simple but practical example arising for fishing quotas to preserve the biomass of fish.
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