Reevaluation of Large Neighborhood Search for MAPF: Findings and Opportunities

Authors

  • Jiaqi Tan Simon Fraser University
  • Yudong Luo University of Waterloo
  • Jiaoyang Li Carnegie Mellon University
  • Hang Ma Simon Fraser University

DOI:

https://doi.org/10.1609/socs.v18i1.35996

Abstract

Multi-Agent Path Finding (MAPF) aims to arrange collision-free goal-reaching paths for a group of agents. Anytime MAPF solvers based on large neighborhood search (LNS) have gained prominence recently due to their flexibility and scalability, leading to a surge of methods, especially those leveraging machine learning, to enhance neighborhood selection. However, several pitfalls exist and hinder a comprehensive evaluation of these new methods, which mainly include: 1) Lower than actual or incorrect baseline performance; 2) Lack of a unified evaluation setting and criterion; 3) Lack of a codebase or executable model for supervised learning methods. To address these challenges, we introduce a unified evaluation framework, implement prior methods, and conduct an extensive comparison of prominent methods. Our evaluation reveals that rule-based heuristics serve as strong baselines, while current learning-based methods show no clear advantage on time efficiency or improvement capacity. Our extensive analysis also opens up new research opportunities for improving MAPF-LNS, such as targeting high-delayed agents, applying contextual algorithms, optimizing replan order and neighborhood size, where machine learning can potentially be integrated.

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Published

2025-07-20

How to Cite

Tan, J., Luo, Y., Li, J., & Ma, H. (2025). Reevaluation of Large Neighborhood Search for MAPF: Findings and Opportunities. Proceedings of the International Symposium on Combinatorial Search, 18(1), 212–220. https://doi.org/10.1609/socs.v18i1.35996