Data Collection versus Data Estimation: A Fundamental Trade-off in Dynamic Networks
Jalal Arabneydi, Amir G. Aghdam

TL;DR
This paper investigates the fundamental trade-off between data collection and estimation in dynamic networks, proposing a decision framework, a reinforcement learning approach, and a separation principle for linear cases.
Contribution
It introduces a novel planning space and Bellman equation for optimal decision-making, along with a reinforcement learning algorithm and a certainty threshold for large networks.
Findings
Proposes a near-optimal strategy for data collection versus estimation.
Develops a reinforcement learning algorithm with proven convergence.
Establishes a Kalman-like filter for linear dynamics case.
Abstract
An important question that often arises in the operation of networked systems is whether to collect the real-time data or to estimate them based on the previously collected data. Various factors should be taken into account such as how informative the data are at each time instant for state estimation, how costly and credible the collected data are, and how rapidly the data vary with time. The above question can be formulated as a dynamic decision making problem with imperfect information structure, where a decision maker wishes to find an efficient way to switch between data collection and data estimation while the quality of the estimation depends on the previously collected data (i.e., duality effect). In this paper, the evolution of the state of each node is modeled as an exchangeable Markov process for discrete features and equivariant linear system for continuous features, where…
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