Asymptotically optimal parameter estimation under communication constraints
Georgios Fellouris

TL;DR
This paper introduces a communication-efficient parameter estimation method for sensors observing semimartingales, achieving asymptotic optimality with minimal data transmission, suitable for resource-constrained environments.
Contribution
It proposes a novel one-bit message transmission scheme at stopping times, ensuring asymptotic optimality under low communication rates.
Findings
Estimator is consistent and asymptotically optimal.
Minimal communication achieves efficiency comparable to full data access.
Method applies to continuous semimartingales and discrete Brownian motions.
Abstract
A parameter estimation problem is considered, in which dispersed sensors transmit to the statistician partial information regarding their observations. The sensors observe the paths of continuous semimartingales, whose drifts are linear with respect to a common parameter. A novel estimating scheme is suggested, according to which each sensor transmits only one-bit messages at stopping times of its local filtration. The proposed estimator is shown to be consistent and, for a large class of processes, asymptotically optimal, in the sense that its asymptotic distribution is the same as the exact distribution of the optimal estimator that has full access to the sensor observations. These properties are established under an asymptotically low rate of communication between the sensors and the statistician. Thus, despite being asymptotically efficient, the proposed estimator requires minimal…
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