Book Image

Reinforcement Learning Algorithms with Python

By : Andrea Lonza
Book Image

Reinforcement Learning Algorithms with Python

By: Andrea Lonza

Overview of this book

Reinforcement Learning (RL) is a popular and promising branch of AI that involves making smarter models and agents that can automatically determine ideal behavior based on changing requirements. This book will help you master RL algorithms and understand their implementation as you build self-learning agents. Starting with an introduction to the tools, libraries, and setup needed to work in the RL environment, this book covers the building blocks of RL and delves into value-based methods, such as the application of Q-learning and SARSA algorithms. You'll learn how to use a combination of Q-learning and neural networks to solve complex problems. Furthermore, you'll study the policy gradient methods, TRPO, and PPO, to improve performance and stability, before moving on to the DDPG and TD3 deterministic algorithms. This book also covers how imitation learning techniques work and how Dagger can teach an agent to drive. You'll discover evolutionary strategies and black-box optimization techniques, and see how they can improve RL algorithms. Finally, you'll get to grips with exploration approaches, such as UCB and UCB1, and develop a meta-algorithm called ESBAS. By the end of the book, you'll have worked with key RL algorithms to overcome challenges in real-world applications, and be part of the RL research community.
Table of Contents (19 chapters)
Free Chapter
1
Section 1: Algorithms and Environments
5
Section 2: Model-Free RL Algorithms
11
Section 3: Beyond Model-Free Algorithms and Improvements
17
Assessments

Summary

In this chapter, we took a break from reinforcement learning algorithms and explored a new type of learning called imitation learning. The novelty of this new paradigm lies in the way in which the learning takes place; that is, the resulting policy imitates the behavior of an expert. This paradigm differentiates from reinforcement learning in the absence of a reward signal and in its ability to leverage the incredible source of information brought by the expert entity.

We saw that the dataset from which the learner learns can be expanded with additional state action pairs to increase the confidence of the learner in new situations. This process is called data aggregation. Moreover, new data could come from the new learned policy and, in this case, we talked about on-policy data (as it comes from the same policy learned). This integration of on-policy states with expert...