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Neural approximations in discounted infinite-horizon stochastic optimal control problems

机译:无限水平对折随机最优控制问题的神经网络近似

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摘要

Neural approximations of the optimal stationary closed-loop control strategies for discounted infinite-horizon stochastic optimal control problems are investigated. It is shown that for a family of such problems, the minimal number of network parameters needed to achieve a desired accuracy of the approximate solution does not grow exponentially with the number of state variables. In such a way, neural-network approximation mitigates the so-called “curse of dimensionality”. The obtained theoretical results point out the potentialities of neural-network based approximation in the framework of sequential decision problems with continuous state, control, and disturbance spaces.
机译:研究了无限水平对折随机最优控制问题的最优平稳闭环控制策略的神经近似。可以看出,对于一系列此类问题,实现近似解的所需精度所需的最小网络参数数量不会随状态变量的数量呈指数增长。以这种方式,神经网络逼近减轻了所谓的“维数诅咒”。获得的理论结果指出了在具有连续状态,控制和扰动空间的顺序决策问题框架下,基于神经网络的近似方法的潜力。

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