Challenges in Credit Assignment for Multi-Agent Reinforcement Learning in Open Agent Systems
Alireza Saleh Abadi, Leen-Kiat Soh

TL;DR
This paper reviews the challenges of credit assignment in open multi-agent reinforcement learning systems, highlighting how agent, task, and type openness complicate attribution and degrade performance.
Contribution
It introduces new sub-categories of openness and empirically demonstrates their impact on credit assignment accuracy in open environments.
Findings
Openness causes credit misattribution in MARL.
Unstable loss functions are observed in open systems.
Performance degradation correlates with increased openness.
Abstract
In the rapidly evolving field of multi-agent reinforcement learning (MARL), understanding the dynamics of open systems is crucial. Openness in MARL refers to the dynam-ic nature of agent populations, tasks, and agent types with-in a system. Specifically, there are three types of openness as reported in (Eck et al. 2023) [2]: agent openness, where agents can enter or leave the system at any time; task openness, where new tasks emerge, and existing ones evolve or disappear; and type openness, where the capabil-ities and behaviors of agents change over time. This report provides a conceptual and empirical review, focusing on the interplay between openness and the credit assignment problem (CAP). CAP involves determining the contribution of individual agents to the overall system performance, a task that becomes increasingly complex in open environ-ments. Traditional credit assignment (CA)…
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Taxonomy
TopicsReinforcement Learning in Robotics · Complex Systems and Time Series Analysis · Experimental Behavioral Economics Studies
