Book Details
Format
Hardcover
Pages
384
Language
English
Published
May 30, 2023
Publisher
MIT Press
ISBN-10
0262048019
ISBN-13
9780262048019
Description
This work introduces the concept of Distributional Reinforcement Learning, a significant evolution in the intersection of adaptive computation and machine learning. The authors, a group of established researchers in the field, delve into how traditional reinforcement learning can be enhanced by representing the entire distribution of possible returns, rather than just focusing on expected outcomes. Through this lens, they explore innovative algorithms and methodologies that can greatly improve decision-making processes in various environments.
The narrative is enriched with theoretical foundations and practical applications, aiming to provide a holistic understanding of these advanced techniques. As the reader progresses, they will encounter deep insights into how leveraging distributional perspectives can lead to more robust learning agents. With comprehensive examples and a detailed examination of the underlying mathematics, this exploration serves as a vital resource for students, researchers, and practitioners looking to expand their knowledge in next-generation reinforcement learning theories.
The narrative is enriched with theoretical foundations and practical applications, aiming to provide a holistic understanding of these advanced techniques. As the reader progresses, they will encounter deep insights into how leveraging distributional perspectives can lead to more robust learning agents. With comprehensive examples and a detailed examination of the underlying mathematics, this exploration serves as a vital resource for students, researchers, and practitioners looking to expand their knowledge in next-generation reinforcement learning theories.
Genres
Science & Technology
Business & Economics
Psychology