relèvereinforcement
Relèvereinforcement is a theoretical framework that fuses relay-based signaling with reinforcement learning to optimize decision-making in distributed networks and multi-agent systems. The term combines the idea of relaying information through intermediate nodes with learning-based optimization, enabling agents to adapt routing, communication, and resource allocation policies based on observed rewards rather than fixed protocols.
Core concepts include agents (relay nodes), state representations that capture topology and resource use, actions that
Relèvereinforcement emphasizes multi-agent coordination under communication constraints. It often involves decentralized or partially centralized learning, where
Applications are envisioned in wireless mesh networks, Internet of Things deployments, sensor networks, swarm robotics, and
Relèvereinforcement remains an emergent concept with varying definitions across disciplines. Ongoing work explores standardized formulations, suitable
See also: reinforcement learning; multi-agent systems; relay networks; decentralized control.