2020
DOI: 10.48550/arxiv.2008.11570
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Optimality of Independently Randomized Symmetric Policies for Exchangeable Stochastic Teams with Infinitely Many Decision Makers

Abstract: We study stochastic team (known also as decentralized stochastic control or identical interest stochastic dynamic game) problems with large or countably infinite number of decision makers, and characterize existence and structural properties for (globally) optimal policies. We consider both static and dynamic non-convex team problems where the cost function and dynamics satisfy an exchangeability condition. We first establish a de Finetti type representation theorem for exchangeable decentralized policies, tha… Show more

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Cited by 3 publications
(6 citation statements)
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References 54 publications
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“…Theorem 7.4. [121] Suppose that Assumption 7.3 holds. Then, any P π ∈ L EX satisfying the following condition:…”
Section: Exchangeability Infinite Products Of Individual Policies And...mentioning
confidence: 99%
“…Theorem 7.4. [121] Suppose that Assumption 7.3 holds. Then, any P π ∈ L EX satisfying the following condition:…”
Section: Exchangeability Infinite Products Of Individual Policies And...mentioning
confidence: 99%
“…Theorem 7.5. [119] Suppose that Assumption 5 holds. Then, any P π ∈ L EX satisfying the following condition:…”
Section: Policies Defined By Conditional Independence Given Measurementsmentioning
confidence: 99%
“…Remark 9. Mean-field teams can be viewed as limit models of symmetric finite player teams with a mean-field interaction (for example, see [29], [28] for mean-field teams, and [9] and references therein for mean-field games). We note that for multi-stage mean-field dynamic teams, the independent data and nested static reduction have been introduced in [29, Section 3.2] and [28,Assumption 5.1(ii)].…”
mentioning
confidence: 99%
“…Mean-field teams can be viewed as limit models of symmetric finite player teams with a mean-field interaction (for example, see [29], [28] for mean-field teams, and [9] and references therein for mean-field games). We note that for multi-stage mean-field dynamic teams, the independent data and nested static reduction have been introduced in [29, Section 3.2] and [28,Assumption 5.1(ii)]. As it has been shown in [29,Section 3.2] and [28,Assumption 5.1(ii)], the above static reduction under mild assumptions on the action and observation spaces leads to a closedness of a set of policies for each player through times under an appropriate topology, which is desirable for establishing existence and/or convergence results.…”
mentioning
confidence: 99%
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