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Stochastic Control of Memory Mean-Field Processes

机译:记忆叶片场过程的随机控制

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摘要

By a memory mean-field process we mean the solution X() of a stochastic mean-field equation involving not just the current state X(t) and its law L(X(t)) at time t, but also the state values X(s) and its law L(X(s)) at some previous times st. Our purpose is to study stochastic control problems of memory mean-field processes. We consider the space M of measures on R with the norm ||||M introduced by Agram and Oksendal (Model uncertainty stochastic mean-field control. arXiv:1611.01385v5, [2]), and prove the existence and uniqueness of solutions of memory mean-field stochastic functional differential equations. We prove two stochastic maximum principles, one sufficient (a verification theorem) and one necessary, both under partial information. The corresponding equations for the adjoint variables are a pair of (time-advanced backward stochastic differential equations (absdes), one of them with values in the space of bounded linear functionals on path segment spaces. As an application of our methods, we solve a memory mean-variance problem as well as a linear-quadratic problem of a memory process.
机译:通过内存意义 - 场进程,我们表示随机平均场方程的解决方案x()不仅涉及当前状态x(t)及其定律L(x(t)),还包括状态值x(s)及其定律L(x(s))在某些前一次s& t。我们的目的是研究内存意义场过程的随机控制问题。我们考虑r r rom |||| m介绍的r r rg ||| || |||| ||||||||||| || |||| ||的r rom ||||记忆均值场随机功能微分方程。我们在部分信息下证明了两个随机最大原则,一个足够的(验证定理)和一个必要的最大原则。用于伴随变量的相应方程是一对(时间高级向后的随机微分方程(Absps),其中一个具有路径段空间上的有界线性功能的空间中的值。作为我们的方法,我们解决了一个记忆均值 - 方差问题以及内存过程的线性二次问题。

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