CoDe: Communication Delay-Tolerant Multi-Agent Collaboration via Dual Alignment of Intent and Timeliness

Authors

  • Shoucheng Song Beijing Jiaotong University Beijing Key Laboratory of Traffic Data Mining and Embodied Intelligence
  • Youfang Lin Beijing Jiaotong University Beijing Key Laboratory of Traffic Data Mining and Embodied Intelligence
  • Sheng Han Beijing Jiaotong University Beijing Key Laboratory of Traffic Data Mining and Embodied Intelligence
  • Chang Yao Beijing Jiaotong University Beijing Key Laboratory of Traffic Data Mining and Embodied Intelligence
  • Hao Wu Beijing Jiaotong University Beijing Key Laboratory of Traffic Data Mining and Embodied Intelligence
  • Shuo Wang Beijing Jiaotong University Beijing Key Laboratory of Traffic Data Mining and Embodied Intelligence
  • Kai Lv Beijing Jiaotong University Beijing Key Laboratory of Traffic Data Mining and Embodied Intelligence

DOI:

https://doi.org/10.1609/aaai.v39i22.34497

Abstract

Communication has been widely employed to enhance multi-agent collaboration. Previous research has typically assumed delay-free communication, a strong assumption that is challenging to meet in practice. However, real-world agents suffer from channel delays, receiving messages sent at different time points, termed Asynchronous Communication, leading to cognitive biases and breakdowns in collaboration. This paper first defines two communication delay settings in MARL and emphasizes their harm to collaboration. To handle the above delays, this paper proposes a novel framework, Communication Delay-Tolerant Multi-Agent Collaboration (CoDe). At first, CoDe learns an intent representation as messages through future action inference, reflecting the stable future behavioral trends of the agents. Then, CoDe devises a dual alignment mechanism of intent and timeliness to strengthen the fusion process of asynchronous messages. In this way, agents can extract the long-term intent of others, even from delayed messages, and selectively utilize the most recent messages that are relevant to their intent. Experimental results demonstrate that CoDe outperforms baseline algorithms in three MARL benchmarks without delay and exhibits robustness under fixed and time-varying delays.

Published

2025-04-11

How to Cite

Song, S., Lin, Y., Han, S., Yao, C., Wu, H., Wang, S., & Lv, K. (2025). CoDe: Communication Delay-Tolerant Multi-Agent Collaboration via Dual Alignment of Intent and Timeliness. Proceedings of the AAAI Conference on Artificial Intelligence, 39(22), 23304-23312. https://doi.org/10.1609/aaai.v39i22.34497

Issue

Section

AAAI Technical Track on Multiagent Systems