Ramaswamy, Arunselvan ; Bhatnagar, Shalabh ; Quevedo, Daniel E. (2020) Asynchronous stochastic approximations with asymptotically biased errors and deep multi-agent learning IEEE Transactions on Automatic Control . p. 1. ISSN 0018-9286
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Official URL: http://doi.org/10.1109/TAC.2020.3026269
Related URL: http://dx.doi.org/10.1109/TAC.2020.3026269
Abstract
Asynchronous stochastic approximations (SAs) are an important class of model-free algorithms, tools and techniques that are popular in multi-agent and distributed control scenarios. To counter Bellman's curse of dimensionality, such algorithms are coupled with function approximations. Although the learning/control problem becomes more tractable, function approximations affect stability and convergence. In this paper, we present verifiable sufficient conditions for stability and convergence of asynchronous SAs with biased approximation errors. The theory developed herein is used to analyze Policy Gradient methods and noisy Value Iteration schemes. Specifically, we analyze the asynchronous approximate counterparts of the policy gradient (A2PG) and value iteration (A2VI) schemes. It is shown that the stability of these algorithms is unaffected by biased approximation errors, provided they are asymptotically bounded. With respect to convergence (of A2VI and A2PG), a relationship between the limiting set and the approximation errors is established. Finally, experimental results are presented that support the theory.
Item Type: | Article |
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Source: | Copyright of this article belongs to Institute of Electrical and Electronics Engineers. |
Keywords: | Asynchronous Stochastic Approximations; Multiagent Learning; Networked Control Systems; Distributed Control; Almost Sure Boundedness (Stability); Deep Reinforcement Learning; Neuro-Dynamic Programming; Deep Function Approximations; Asymptotically Biased Approximation Errors. |
ID Code: | 116418 |
Deposited On: | 12 Apr 2021 05:50 |
Last Modified: | 12 Apr 2021 05:50 |
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