FreeComputerBooks.com
Links to Free Computer, Mathematics, Technical Books all over the World
|
|
- Title: An Introduction to Deep Reinforcement Learning
- Author(s) Vincent François-Lavet, Peter Henderson, Riashat Islam
- Publisher: Now Publishers Inc (March 31, 2019); eBook (Arxiv, Creative Commons Licensed)
- License(s): Creative Commons License (CC)
- Hardcover: 156 pages
- eBook: PDF
- Language: English
- ISBN-10: 1680835386
- ISBN-13: 978-1680835380
- Share This:
Deep reinforcement learning is the combination of reinforcement learning (RL) and deep learning. This field of research has recently been able to solve a wide range of complex decision-making tasks that were previously out of reach for a machine.
About the Authors- N/A
- Machine Learning
- Neural Networks and Depp Learning
- Artificial Intelligence
- Statistics, Mathematical Statistics, and SAS Programming
- Probability and Stochastic Processe
- An Introduction to Deep Reinforcement Learning (Vincent François-Lavet, et al)
- The Mirror Site (1) - PDF
- The Mirror Site (2) - PDF
-
Multi-Agent Reinforcement Learning (Stefano V. Albrecht, et al.)
The first comprehensive introduction to Multi-Agent Reinforcement Learning (MARL), covering MARL’s models, solution concepts, algorithmic ideas, technical challenges, and modern approaches.
-
Distributional Reinforcement Learning (Marc G. Bellemare, et al)
Distributional reinforcement learning is a new mathematical formalism for thinking about decisions. This first comprehensive guide provides a new mathematical formalism for thinking about decisions from a probabilistic perspective.
-
Reinforcement Learning and Optimal Control (Dimitri Bertsekas)
The purpose of the book is to consider large and challenging multistage decision problems, which can be solved in principle by dynamic programming and optimal control, but their exact solution is computationally intractable.
-
Reinforcement Learning: An Introduction, Second Edition
It provides a clear and simple account of the key ideas and algorithms of reinforcement learning that is accessible to readers in all the related disciplines. Focuses on core online learning algorithms.
-
Algorithms for Reinforcement Learning (Csaba Szepesvari)
Focuses on those algorithms of reinforcement learning that build on the powerful theory of dynamic programming. It gives a fairly comprehensive catalog of learning problems, describe the core ideas, note a large number of state of the art algorithms.
-
The Hundred-Page Machine Learning Book (Andriy Burkov)
Everything you really need to know in Machine Learning in a hundred pages! This book provides a great practical guide to get started and execute on ML within a few days without necessarily knowing much about ML apriori.
-
Understanding Machine Learning: From Theory to Algorithms
Explains the principles behind the automated learning approach and the considerations underlying its usage. Provides an extensive theoretical account of the fundamental ideas underlying machine learning and the mathematical derivations.
-
Foundations of Machine Learning (Mehryar Mohri, et al)
This book is a general introduction to machine learning. It covers fundamental modern topics in machine learning while providing the theoretical basis and conceptual tools needed for the discussion and justification of algorithms.
-
Probabilistic Machine Learning: An Introduction (Kevin Murphy)
This book is a comprehensive introduction to machine learning that uses probabilistic models and inference as a unifying approach. It is written in an informal, accessible style, complete with pseudo-code for the most important algorithms.
-
Machine Learning Yearning (Andrew Ng)
You will learn how to align on ML strategies in a team setting, as well as how to set up development (dev) sets and test sets. After finishing this book, you will have a deep understanding of how to set technical direction for a machine learning project.
:
|
|