TL;DR
This paper introduces a relaxed metric dimension concept that reduces sensor requirements for source localization in graphs, supported by theoretical analysis and numerical experiments across various network types.
Contribution
It extends the traditional metric dimension by allowing shared distance profiles, providing theoretical insights for trees and stochastic models, and proposes an efficient localization strategy.
Findings
Relaxed metric dimension is significantly smaller than traditional metric dimension.
Number of indistinguishable vertices remains small with relaxation.
Two-step localization balances resolution and sensor count effectively.
Abstract
Source localization in graphs involves identifying the origin of a phenomenon or event, such as an epidemic outbreak or a misinformation source, by leveraging structural graph properties. One key concept in this context is the metric dimension, which quantifies the minimum number of strategically placed sensors needed to uniquely identify all vertices based on their distances. While powerful, the traditional metric dimension imposes a stringent requirement that every vertex must be uniquely identified, often necessitating a large number of sensors. In this work, we relax the metric dimension and allow vertices at a graph distance less than k to share identical distance profiles relative to the sensors. This relaxation reduces the number of sensors needed while maintaining sufficient resolution for practical applications like source localization and network monitoring. We provide two…
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