NEAIROJul 14, 2025

Emergent Heterogeneous Swarm Control Through Hebbian Learning

arXiv:2507.11566v11 citationsh-index: 24
Originality Highly original
AI Analysis

This addresses the challenge of learning heterogeneous control for swarm robotics, offering a biologically inspired alternative to methods like Multi Agent Reinforcement Learning.

The paper tackles the problem of enabling automatic emergence of heterogeneity in swarm robotics by introducing Hebbian learning, resulting in significantly improved swarm capabilities and behavioral switching without extensive prior knowledge.

In this paper, we introduce Hebbian learning as a novel method for swarm robotics, enabling the automatic emergence of heterogeneity. Hebbian learning presents a biologically inspired form of neural adaptation that solely relies on local information. By doing so, we resolve several major challenges for learning heterogeneous control: 1) Hebbian learning removes the complexity of attributing emergent phenomena to single agents through local learning rules, thus circumventing the micro-macro problem; 2) uniform Hebbian learning rules across all swarm members limit the number of parameters needed, mitigating the curse of dimensionality with scaling swarm sizes; and 3) evolving Hebbian learning rules based on swarm-level behaviour minimises the need for extensive prior knowledge typically required for optimising heterogeneous swarms. This work demonstrates that with Hebbian learning heterogeneity naturally emerges, resulting in swarm-level behavioural switching and in significantly improved swarm capabilities. It also demonstrates how the evolution of Hebbian learning rules can be a valid alternative to Multi Agent Reinforcement Learning in standard benchmarking tasks.

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