Age of Gossip in Networks with Multiple Views of a Source
Kian J. Khojastepour, Matin Mortaheb, Sennur Ulukus

TL;DR
This paper analyzes the age of information in networks with multiple nodes sensing a source, deriving recursive formulas and asymptotic behaviors, showing distributed sensing can match single-source performance with fewer sensing nodes.
Contribution
It provides a recursive expression for the average version age in multi-node networks and demonstrates that distributed sensing can achieve similar asymptotic performance with fewer sensing nodes.
Findings
Average AoI scales as O(log(n)) in fully connected networks.
Average AoI scales as O(√n) in ring networks.
Distributed sensing with O(√n) nodes achieves the same AoI as a single view.
Abstract
We consider the version age of information (AoI) in a network where a subset of nodes act as sensing nodes, sampling a source that in general can follow a continuous distribution. Any sample of the source constitutes a new version of the information and the version age of the information is defined with respect to the most recent version of the information available for the whole network. We derive a recursive expression for the average version AoI between different subsets of the nodes which can be used to evaluate the average version AoI for any subset of the nodes including any single node. We derive asymptotic behavior of the average AoI on any single node of the network for various topologies including line, ring, and fully connected networks. The prior art result on version age of a network by Yates [ISIT'21] can be interpreted as in our derivation as a network with a single view…
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Taxonomy
TopicsOpportunistic and Delay-Tolerant Networks · Age of Information Optimization · Opinion Dynamics and Social Influence
