Solving Multiagent Path Finding on Highly Centralized Networks

Authors

  • Foivos Fioravantes Czech Technical University of Prague
  • Dušan Knop Czech Technical University of Prague
  • Jan Matyáš Křišťan Czech Technical University of Prague
  • Nikolaos Melissinos Czech Technical University of Prague
  • Michal Opler Czech Technical University of Prague
  • Tung Anh Vu Charles University Prague

DOI:

https://doi.org/10.1609/aaai.v39i22.34484

Abstract

The Mutliagent Path Finding (MAPF) problem consists of identifying the trajectories that a set of agents should follow inside a given network in order to reach their desired destinations as soon as possible, but without colliding with each other. We aim to minimize the maximum time any agent takes to reach their goal, ensuring optimal path length. In this work, we complement a recent thread of results that aim to systematically study the algorithmic behavior of this problem, through the parameterized complexity point of view. First, we show that MAPF is NP-hard when the given network has a star-like topology (bounded vertex cover number) or is a tree with 11 leaves. Both of these results fill important gaps in our understanding of the tractability of this problem that were left untreated in the recent work of Fioravantes et al., Exact Algorithms and Lowerbounds for Multiagent Path Finding: Power of Treelike Topology, presented in AAAI'24. Nevertheless, our main contribution is an exact algorithm that scales well as the input grows (FPT) when the topology of the given network is highly centralized (bounded distance to clique). This parameter is significant as it mirrors real-world networks. In such environments, a bunch of central hubs or nodes (e.g., processing areas) are connected to peripheral nodes.

Published

2025-04-11

How to Cite

Fioravantes, F., Knop, D., Křišťan, J. M., Melissinos, N., Opler, M., & Anh Vu, T. (2025). Solving Multiagent Path Finding on Highly Centralized Networks. Proceedings of the AAAI Conference on Artificial Intelligence, 39(22), 23186–23193. https://doi.org/10.1609/aaai.v39i22.34484

Issue

Section

AAAI Technical Track on Multiagent Systems