Ergodicity, Decisions, and Partial Information
Ramon van Handel

TL;DR
This paper explores the existence of optimal decision strategies in ergodic systems with partial information, linking ergodic theory concepts to decision-making and filtering, and establishing conditions for strategy optimality.
Contribution
It introduces a connection between ergodic theory and decision strategies under partial information, providing new conditions for the existence of pathwise optimal strategies.
Findings
Conditional ergodic theory influences strategy existence
Complexity of loss functions affects strategy optimality
Pathwise optimality of ergodic nonlinear filters
Abstract
In the simplest sequential decision problem for an ergodic stochastic process X, at each time n a decision u_n is made as a function of past observations X_0,...,X_{n-1}, and a loss l(u_n,X_n) is incurred. In this setting, it is known that one may choose (under a mild integrability assumption) a decision strategy whose pathwise time-average loss is asymptotically smaller than that of any other strategy. The corresponding problem in the case of partial information proves to be much more delicate, however: if the process X is not observable, but decisions must be based on the observation of a different process Y, the existence of pathwise optimal strategies is not guaranteed. The aim of this paper is to exhibit connections between pathwise optimal strategies and notions from ergodic theory. The sequential decision problem is developed in the general setting of an ergodic dynamical…
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