A Stochastic Maximum Principle for a Minimization Problem Under Partial Information

Eric.K Tatiagoum
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Abstract

In this paper, we establish a stochastic maximum principle for a stochastic minimization problem under partial information. With the Backward stochastic differential equations (in short BSDE’s), we establish a sufficient condition of optimality to characterize and determine an optimal control. This is done instead of using the Hamiltonian which is a deterministic function. The equations translating the dynamics of the state variables of the controlled system contain an BSPDE (Backward stochastic partial differential equation) which can be the unnormalized conditional density like the Zakai equation born from a problem of passage from partial to full information.
部分信息下最小化问题的随机极大值原理
本文建立了部分信息下随机最小化问题的随机极大值原理。利用倒向随机微分方程(简称BSDE),我们建立了一个充分的最优性条件来表征和确定最优控制。这是代替使用作为确定性函数的哈密顿量来完成的。转换受控系统状态变量动力学的方程包含一个BSPDE(反向随机偏微分方程),它可以是非规范化的条件密度,就像Zakai方程一样,源于从部分信息到全部信息的传递问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
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发文量
18
审稿时长
6 weeks
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