Linked e-resources
Details
Table of Contents
Chapter 1 Introduction of Reinforcement Learning
Chapter 2 Principles of RL Problems
Chapter 3 Model-free Indirect RL: Monte Carlo
Chapter 4 Model-Free Indirect RL: Temporal-Difference
Chapter 5 Model-based Indirect RL: Dynamic Programming
Chapter 6 Indirect RL with Function Approximation
Chapter 7 Direct RL with Policy Gradient
Chapter 8 Infinite Horizon Approximate Dynamic Programming
Chapter 9 Finite Horizon ADP and State Constraints
Chapter 10 Deep Reinforcement Learning
Chapter 11 Advanced RL Topics.
Chapter 2 Principles of RL Problems
Chapter 3 Model-free Indirect RL: Monte Carlo
Chapter 4 Model-Free Indirect RL: Temporal-Difference
Chapter 5 Model-based Indirect RL: Dynamic Programming
Chapter 6 Indirect RL with Function Approximation
Chapter 7 Direct RL with Policy Gradient
Chapter 8 Infinite Horizon Approximate Dynamic Programming
Chapter 9 Finite Horizon ADP and State Constraints
Chapter 10 Deep Reinforcement Learning
Chapter 11 Advanced RL Topics.