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The seminal work of Lasry and Lion showed the existence of Nash equilibria in thecontinuum limit of agents who try to optimize their own utility functions. However, a lot of work in this region is predicated on strong assumptions on the

The seminal work of Lasry and Lion showed the existence of Nash equilibria in thecontinuum limit of agents who try to optimize their own utility functions. However, a lot of work in this region is predicated on strong assumptions on the asymptotic independence of the agents and their homogeneity. This work explores the existence of Equilibria under the limit for Markov Decision Processes for density dependent continuous time Markov chains. Under suitable conditions it is possible to show that the empirical measure of the agents converges in finite time to a time invariant distribution which makes the solution of the MDP tractable. This key step allows one to show not only the existence of equilibria for these MDPs without asymptotic independence but also a tractable means to find said equilibria. Finally, this work shows that a fixed point does exist in the in finite state limit. However, to show that such a limit is indeed a Nash equilibrium remains an open problem.
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    Title
    • Mean Field Games for Continuous Time Density Dependent Markov Chains
    Contributors
    Date Created
    2021
    Resource Type
  • Text
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    • Partial requirement for: Ph.D., Arizona State University, 2021
    • Field of study: Electrical Engineering

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