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Transfer Learning for Multiagent Reinforcement Learning Systems
β Scribed by Felipe Leno da Silva, Anna Helena Reali Costa
- Publisher
- Springer
- Year
- 2021
- Tongue
- English
- Leaves
- 121
- Series
- Synthesis Lectures on Artificial Intelligence and Machine Learning
- Edition
- 1
- Category
- Library
No coin nor oath required. For personal study only.
β¦ Synopsis
Learning to solve sequential decision-making tasks is difficult. Humans take years exploring the environment essentially in a random way until they are able to reason, solve difficult tasks, and collaborate with other humans towards a common goal. Artificial Intelligent agents are like humans in this aspect. Reinforcement Learning (RL) is a well-known technique to train autonomous agents through interactions with the environment. Unfortunately, the learning process has a high sample complexity to infer an effective actuation policy, especially when multiple agents are simultaneously actuating in the environment.
However, previous knowledge can be leveraged to accelerate learning and enable solving harder tasks. In the same way humans build skills and reuse them by relating different tasks, RL agents might reuse knowledge from previously solved tasks and from the exchange of knowledge with other agents in the environment. In fact, virtually all of the most challenging tasks currently solved by RL rely on embedded knowledge reuse techniques, such as Imitation Learning, Learning from Demonstration, and Curriculum Learning.
This book surveys the literature on knowledge reuse in multiagent RL. The authors define a unifying taxonomy of state-of-the-art solutions for reusing knowledge, providing a comprehensive discussion of recent progress in the area. In this book, readers will find a comprehensive discussion of the many ways in which knowledge can be reused in multiagent sequential decision-making tasks, as well as in which scenarios each of the approaches is more efficient. The authors also provide their view of the current low-hanging fruit developments of the area, as well as the still-open big questions that could result in breakthrough developments. Finally, the book provides resources to researchers who intend to join this area or leverage those techniques, including a list of conferences, journals, and implementation tools.
This book will be useful for a wide audience; and will hopefully promote new dialogues across communities and novel developments in the area.
β¦ Table of Contents
Cover
Copyright Page
Title Page
Contents
Preface
Acknowledgments
Introduction
Contribution and Scope
Overview
Background
The Basics of Reinforcement Learning
Deep Reinforcement Learning
Multiagent Reinforcement Learning
Transfer Learning
Taxonomy
Nomenclature
Learning Algorithm (LA)
Source Task Selection (ST)
Mapping Autonomy (MA)
Transferred Knowledge (TK)
Allowed Differences (AD)
Intra-Agent Transfer Methods
Adapting to Other Agents
Sparse Interaction Algorithms
Relational Descriptions
Source Task Selection
Biases and Heuristics
Curriculum Learning
Deep Reinforcement Learning Transfer
Others
Inter-Agent Transfer Methods
Action Advising
Human-Focused Transfer
Learning from Demonstrations
Imitation
Reward Shaping and Heuristics
Inverse Reinforcement Learning
Curriculum Learning
Transfer in Deep Reinforcement Learning
Scaling Learning to Complex Problems
Experiment Domains and Applications
Gridworld and Variations
Simulated Robot Soccer
Video Games
Robotics
Smart Grid
Autonomous Driving Simulation
Current Challenges
Curriculum Learning in Multiagent Systems
Benchmarks for Transfer in Multiagent Systems
Knowledge Reuse for Ad Hoc Teams
End-to-End Multiagent Transfer Frameworks
Transfer for Deep Multiagent Reinforcement Learning
Integrated Inter-Agent and Intra-Agent Transfer
Human-Focused Multiagent Transfer Learning
Cloud Knowledge Bases
Mean-Field Knowledge Reuse
Security
Inverse Reinforcement Learning for Enforcing Cooperation
Adversary-Aware Learning Approaches
Resources
Conferences
Journals
Libraries
Conclusion
Bibliography
Authors' Biographies
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