Détails du livre
Format
Kindle
Pages
379
Langue
Anglais
Publié
Jan 1, 2023
Éditeur
MIT Press
Édition
2
ISBN-10
0262374013
ISBN-13
9780262374019
Description
In a rapidly evolving field, the authors present a groundbreaking approach to reinforcement learning that focuses on the distribution of potential future rewards rather than just their expected values. This innovative perspective allows for a deeper understanding and finer tuning of algorithms that can lead to more effective learning in complex environments. They meticulously explore mathematical principles and phenomena, making the content not only insightful but also accessible.
Through clear examples and detailed explanations, readers are guided through the intricacies of distributional reinforcement learning, from foundational concepts to advanced techniques. The book delves into practical applications, illustrating how these methods can enhance decision-making processes across various fields, including robotics, economics, and artificial intelligence.
As the book unfolds, it captures the excitement and challenges of modern machine learning research, encouraging practitioners and researchers alike to push the boundaries of what is possible. By equipping readers with the tools to leverage distributional approaches, it paves the way for future innovations and breakthroughs in reinforcement learning.
Through clear examples and detailed explanations, readers are guided through the intricacies of distributional reinforcement learning, from foundational concepts to advanced techniques. The book delves into practical applications, illustrating how these methods can enhance decision-making processes across various fields, including robotics, economics, and artificial intelligence.
As the book unfolds, it captures the excitement and challenges of modern machine learning research, encouraging practitioners and researchers alike to push the boundaries of what is possible. By equipping readers with the tools to leverage distributional approaches, it paves the way for future innovations and breakthroughs in reinforcement learning.
Genres
Science & Technologie
Affaires & Économie
Psychologie