Emergence of Hierarchies in Multi-Agent Self-Organizing Systems Pursuing a Joint Objective
Gang Chen, Guoxin Wang, Anton van Beek, Zhenjun Ming, Yan Yan

TL;DR
This paper investigates how dependency hierarchies naturally emerge and evolve in multi-agent self-organizing systems during collaborative tasks, using reinforcement learning to analyze inter-agent dependencies and their influence on system behavior.
Contribution
It introduces a method to quantify inter-agent dependencies and demonstrates that hierarchies form organically based on shared objectives and environmental factors, without pre-configured rules.
Findings
Hierarchies emerge dynamically during task execution.
Dependencies are influenced by environment and initialization.
Hierarchies evolve with changing task requirements.
Abstract
Multi-agent self-organizing systems (MASOS) exhibit key characteristics including scalability, adaptability, flexibility, and robustness, which have contributed to their extensive application across various fields. However, the self-organizing nature of MASOS also introduces elements of unpredictability in their emergent behaviors. This paper focuses on the emergence of dependency hierarchies during task execution, aiming to understand how such hierarchies arise from agents' collective pursuit of the joint objective, how they evolve dynamically, and what factors govern their development. To investigate this phenomenon, multi-agent reinforcement learning (MARL) is employed to train MASOS for a collaborative box-pushing task. By calculating the gradients of each agent's actions in relation to the states of other agents, the inter-agent dependencies are quantified, and the emergence of…
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