Numerical Approximations for Stochastic Differential Games: The Ergodic Case

نویسنده

  • Harold J. Kushner
چکیده

The Markov chain approximation method is a widely used, relatively easy to use, and efficient family of methods for the bulk of stochastic control problems in continuous time, for reßected-jump-diffusion type models. It has been shown to converge under broad conditions, and there are good algorithms for solving the numerical problems, if the dimension is not too high. We consider a class of stochastic differential games with a reßected diffusion system model and ergodic cost criterion and where the controls for the two players are separated in the dynamics and cost function. It is shown that the value of the game exists and that the numerical method converges to this value as the discretization parameter goes to zero. The actual numerical method solves a stochastic game for a Þnite state Markov chain and ergodic cost criterion. The essential conditions are nondegeneracy and that a weak local consistency condition hold “almost everywhere” for the numerical approximations, just as for the control problem.

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عنوان ژورنال:
  • SIAM J. Control and Optimization

دوره 42  شماره 

صفحات  -

تاریخ انتشار 2004