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Main Authors: Mürmann, Paula, Jaccard, Robin, Dreveton, Maximilien, Ravari, Aryan Alavi Razavi, Thiran, Patrick
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.11193
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author Mürmann, Paula
Jaccard, Robin
Dreveton, Maximilien
Ravari, Aryan Alavi Razavi
Thiran, Patrick
author_facet Mürmann, Paula
Jaccard, Robin
Dreveton, Maximilien
Ravari, Aryan Alavi Razavi
Thiran, Patrick
contents 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 main theoretical contributions: an analysis of the k-relaxed metric dimension in deterministic trees, revealing the interplay between structural properties and sensor placement, and an extension to random trees generated by branching processes, offering insights into stochastic settings. We also conduct numerical experiments across a variety of graph types, including random trees, random geometric graphs, and real-world networks. The results show that the relaxed metric dimension is significantly smaller than the traditional metric dimension. Furthermore, the number of vertices indistinguishable from any given target vertex always remains small. Finally, we propose and evaluate a two-step localization strategy that balances the trade-off between resolution and the number of sensors required. This strategy identifies an optimal relaxation level that minimizes the total number of sensors across both steps, providing a practical and efficient approach to source localization.
format Preprint
id arxiv_https___arxiv_org_abs_2505_11193
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Reducing Sensor Requirements by Relaxing the Network Metric Dimension
Mürmann, Paula
Jaccard, Robin
Dreveton, Maximilien
Ravari, Aryan Alavi Razavi
Thiran, Patrick
Discrete Mathematics
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 main theoretical contributions: an analysis of the k-relaxed metric dimension in deterministic trees, revealing the interplay between structural properties and sensor placement, and an extension to random trees generated by branching processes, offering insights into stochastic settings. We also conduct numerical experiments across a variety of graph types, including random trees, random geometric graphs, and real-world networks. The results show that the relaxed metric dimension is significantly smaller than the traditional metric dimension. Furthermore, the number of vertices indistinguishable from any given target vertex always remains small. Finally, we propose and evaluate a two-step localization strategy that balances the trade-off between resolution and the number of sensors required. This strategy identifies an optimal relaxation level that minimizes the total number of sensors across both steps, providing a practical and efficient approach to source localization.
title Reducing Sensor Requirements by Relaxing the Network Metric Dimension
topic Discrete Mathematics
url https://arxiv.org/abs/2505.11193