Quantized Stationary Control Policies in Markov Decision Processes
Naci Saldi, Tam\'as Linder, Serdar Y\"uksel

TL;DR
This paper demonstrates that quantized stationary policies can approximate optimal policies in Markov Decision Processes with arbitrary precision, facilitating practical implementation in networked control systems with low information rates.
Contribution
The paper introduces deterministic stationary quantizer policies and proves they can approximate optimal policies with arbitrary accuracy, extending results to randomized policies.
Findings
Quantized policies can approximate optimal policies arbitrarily closely.
Explicit bounds on approximation error are derived.
Results apply to both discounted and average cost criteria.
Abstract
For a large class of Markov Decision Processes, stationary (possibly randomized) policies are globally optimal. However, in Borel state and action spaces, the computation and implementation of even such stationary policies are known to be prohibitive. In addition, networked control applications require remote controllers to transmit action commands to an actuator with low information rate. These two problems motivate the study of approximating optimal policies by quantized (discretized) policies. To this end, we introduce deterministic stationary quantizer policies and show that such policies can approximate optimal deterministic stationary policies with arbitrary precision under mild technical conditions, thus demonstrating that one can search for -optimal policies within the class of quantized control policies. We also derive explicit bounds on the approximation error in…
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Taxonomy
TopicsAdvanced Control Systems Optimization · Formal Methods in Verification · Reinforcement Learning in Robotics
