Multi-Agent Interplay in a Competitive Survival Environment
- URL: http://arxiv.org/abs/2301.08030v1
- Date: Thu, 19 Jan 2023 12:04:03 GMT
- Title: Multi-Agent Interplay in a Competitive Survival Environment
- Authors: Andrea Fanti
- Abstract summary: This thesis is part of the author's thesis "Multi-Agent Interplay in a Competitive Survival Environment" for the Master's Degree in Artificial Intelligence and Robotics at Sapienza University of Rome, 2022.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Solving hard-exploration environments in an important challenge in
Reinforcement Learning. Several approaches have been proposed and studied, such
as Intrinsic Motivation, co-evolution of agents and tasks, and multi-agent
competition. In particular, the interplay between multiple agents has proven to
be capable of generating human-relevant emergent behaviour that would be
difficult or impossible to learn in single-agent settings. In this work, an
extensible competitive environment for multi-agent interplay was developed,
which features realistic physics and human-relevant semantics. Moreover,
several experiments on different variants of this environment were performed,
resulting in some simple emergent strategies and concrete directions for future
improvement. The content presented here is part of the author's thesis
"Multi-Agent Interplay in a Competitive Survival Environment" for the Master's
Degree in Artificial Intelligence and Robotics at Sapienza University of Rome,
2022.
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