Book Image

PyTorch 1.x Reinforcement Learning Cookbook

By : Yuxi (Hayden) Liu
Book Image

PyTorch 1.x Reinforcement Learning Cookbook

By: Yuxi (Hayden) Liu

Overview of this book

Reinforcement learning (RL) is a branch of machine learning that has gained popularity in recent times. It allows you to train AI models that learn from their own actions and optimize their behavior. PyTorch has also emerged as the preferred tool for training RL models because of its efficiency and ease of use. With this book, you'll explore the important RL concepts and the implementation of algorithms in PyTorch 1.x. The recipes in the book, along with real-world examples, will help you master various RL techniques, such as dynamic programming, Monte Carlo simulations, temporal difference, and Q-learning. You'll also gain insights into industry-specific applications of these techniques. Later chapters will guide you through solving problems such as the multi-armed bandit problem and the cartpole problem using the multi-armed bandit algorithm and function approximation. You'll also learn how to use Deep Q-Networks to complete Atari games, along with how to effectively implement policy gradients. Finally, you'll discover how RL techniques are applied to Blackjack, Gridworld environments, internet advertising, and the Flappy Bird game. By the end of this book, you'll have developed the skills you need to implement popular RL algorithms and use RL techniques to solve real-world problems.
Table of Contents (11 chapters)

Solving multi-armed bandit problems with the upper confidence bound algorithm

In the previous two recipes, we explored random actions in the multi-armed bandit problem with probabilities that are either assigned as fixed values in the epsilon-greedy policy or computed based on the Q-function values in the softmax exploration algorithm. In either algorithm, the probabilities of taking random actions are not adjusted over time. Ideally, we want less exploration as learning progresses. In this recipe, we will use a new algorithm called upper confidence bound to achieve this goal.

The upper confidence bound (UCB) algorithm stems from the idea of the confidence interval. In general, the confidence interval is a range of values where the true value lies. In the UCB algorithm, the confidence interval for an arm is a range where the mean reward obtained with this arm lies. The interval...