Bounded Coupled AI Learning Dynamics in Tri-Hierarchical Drone Swarms
arXiv cs.LG / 2026/3/24
💬 オピニオンIdeas & Deep AnalysisModels & Research
要点
- The paper addresses whether heterogeneous learning mechanisms in tri-hierarchical drone swarms can be formally guaranteed to remain within an admissible operational regime as they run at different timescales.
- It models three coupled learning layers simultaneously: fast Hebbian online learning at the agent level, medium-timescale MARL for group coordination, and slow-timescale MAML for strategic adaptation.
- It proves multiple formal guarantees, including a bounded total error result that limits long-run suboptimality under constraints on learning rates, Lipschitz inter-level mappings, and weight stabilization.
- It provides worst-case bounds on how Hebbian updates can perturb coordination-level representations across MARL cycles and shows that meta-level adaptation can preserve lower-level invariants.
- A non-accumulation theorem further establishes that coupled error does not grow unbounded over time, supporting stability arguments for the overall system.

