Multi-agent Reinforcement Learning with Sparse Interactions by Negotiation and Knowledge Transfer
Luowei Zhou, Pei Yang, Chunlin Chen, Yang Gao

TL;DR
This paper introduces NegoSI, a novel multi-agent reinforcement learning algorithm that leverages negotiation, equilibrium concepts, and knowledge transfer to improve scalability, privacy, and coordination in dynamic environments.
Contribution
The paper presents NegoSI, a new MARL algorithm combining equilibrium-based sparse interactions, negotiation, and knowledge transfer, addressing scalability and privacy issues.
Findings
Fast convergence and high scalability in grid world experiments.
Effective performance in intelligent warehouse problem.
Reduced computational complexity compared to existing methods.
Abstract
Reinforcement learning has significant applications for multi-agent systems, especially in unknown dynamic environments. However, most multi-agent reinforcement learning (MARL) algorithms suffer from such problems as exponential computation complexity in the joint state-action space, which makes it difficult to scale up to realistic multi-agent problems. In this paper, a novel algorithm named negotiation-based MARL with sparse interactions (NegoSI) is presented. In contrast to traditional sparse-interaction based MARL algorithms, NegoSI adopts the equilibrium concept and makes it possible for agents to select the non-strict Equilibrium Dominating Strategy Profile (non-strict EDSP) or Meta equilibrium for their joint actions. The presented NegoSI algorithm consists of four parts: the equilibrium-based framework for sparse interactions, the negotiation for the equilibrium set, the minimum…
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