K Zhang, Z Yang, T Başar - Handbook of reinforcement learning and …, 2021 - Springer
Recent years have witnessed significant advances in reinforcement learning (RL), which has registered tremendous success in solving various sequential decision-making problems …
This work identifies 18 foundational challenges in assuring the alignment and safety of large language models (LLMs). These challenges are organized into three different categories …
The advances in reinforcement learning have recorded sublime success in various domains. Although the multi-agent domain has been overshadowed by its single-agent counterpart …
This paper introduces the PettingZoo library and the accompanying Agent Environment Cycle (" AEC") games model. PettingZoo is a library of diverse sets of multi-agent …
Collaborating with humans requires rapidly adapting to their individual strengths, weaknesses, and preferences. Unfortunately, most standard multi-agent reinforcement …
Role-based learning holds the promise of achieving scalable multi-agent learning by decomposing complex tasks using roles. However, it is largely unclear how to efficiently …
While we would like agents that can coordinate with humans, current algorithms such as self- play and population-based training create agents that can coordinate with themselves …
We propose a unified mechanism for achieving coordination and communication in Multi- Agent Reinforcement Learning (MARL), through rewarding agents for having causal …
Existing evaluation suites for multi-agent reinforcement learning (MARL) do not assess generalization to novel situations as their primary objective (unlike supervised learning …