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research article

Sequential metric dimension for random graphs

Odor, Gergely  
•
Thiran, Patrick  
2021
Journal of Applied Probability

In the localization game on a graph, the goal is to find a fixed but unknown target node v* with the least number of distance queries possible. In the j-th step of the game, the player queries a single node v_j and receives, as an answer to their query, the distance between the nodes v_j and v* . The sequential metric dimension (SMD) is the minimal number of queries that the player needs to guess the target with absolute certainty, no matter where the target is. The term SMD originates from the related notion of metric dimension (MD), which can be defined the same way as the SMD except that the player’s queries are non-adaptive. In this work we extend the results of Bollobás, Mitsche, and Prałat on the MD of Erdős–Rényi graphs to the SMD. We find that, in connected Erdős–Rényi graphs, the MD and the SMD are a constant factor apart. For the lower bound we present a clean analysis by combining tools developed for the MD and a novel coupling argument. For the upper bound we show that a strategy that greedily minimizes the number of candidate targets in each step uses asymptotically optimal queries in Erdős–Rényi graphs. Connections with source localization, binary search on graphs, and the birthday problem are discussed.

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Type
research article
DOI
10.1017/jpr.2021.16
Author(s)
Odor, Gergely  
Thiran, Patrick  
Date Issued

2021

Published in
Journal of Applied Probability
Volume

58

Issue

4

Start page

909

End page

951

Subjects

source detection

•

binary search on graphs

•

expansion properties of Erdős–Rényi graphs

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
INDY2  
Available on Infoscience
November 22, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/183182
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