Reinforcement Learning and Stochastic Optimization: A Unified Framework for Sequential Decisions

Reinforcement Learning and Stochastic Optimization: A Unified Framework for Sequential Decisions

By Warren B Powell

"The first step in sequential decision problems is to understand what decisions are being made. It is surprising how often it is that people faced with complex problems, which spans scientists in a lab to people trying to solve major health problems, are not able to identify the decisions they face. We then want to find a method for making decisions.

READ FULL DESCRIPTION

Quantity Price Discount
List Price $156.95  
1 - 24 $133.41 15%
25 - 99 $109.87 30%
100 - 249 $106.73 32%
250 - 499 $102.02 35%
500 + $98.88 37%

Quick Quote

Lorem ipsum dolor sit amet, consectetur adipisicing elit

Non-returnable discount pricing

$156.95


Book Information

Publisher: Wiley
Publish Date: 03/15/2022
Pages: 1136
ISBN-13: 9781119815037
ISBN-10: 1119815037
Language: English

Full Description

REINFORCEMENT LEARNING AND STOCHASTIC OPTIMIZATION

Clearing the jungle of stochastic optimization

Sequential decision problems, which consist of "decision, information, decision, information," are ubiquitous, spanning virtually every human activity ranging from business applications, health (personal and public health, and medical decision making), energy, the sciences, all fields of engineering, finance, and e-commerce. The diversity of applications attracted the attention of at least 15 distinct fields of research, using eight distinct notational systems which produced a vast array of analytical tools. A byproduct is that powerful tools developed in one community may be unknown to other communities.

Reinforcement Learning and Stochastic Optimization offers a single canonical framework that can model any sequential decision problem using five core components: state variables, decision variables, exogenous information variables, transition function, and objective function. This book highlights twelve types of uncertainty that might enter any model and pulls together the diverse set of methods for making decisions, known as policies, into four fundamental classes that span every method suggested in the academic literature or used in practice.

Reinforcement Learning and Stochastic Optimization is the first book to provide a balanced treatment of the different methods for modeling and solving sequential decision problems, following the style used by most books on machine learning, optimization, and simulation. The presentation is designed for readers with a course in probability and statistics, and an interest in modeling and applications. Linear programming is occasionally used for specific problem classes. The book is designed for readers who are new to the field, as well as those with some background in optimization under uncertainty.

Throughout this book, readers will find references to over 100 different applications, spanning pure learning problems, dynamic resource allocation problems, general state-dependent problems, and hybrid learning/resource allocation problems such as those that arose in the COVID pandemic. There are 370 exercises, organized into seven groups, ranging from review questions, modeling, computation, problem solving, theory, programming exercises and a "diary problem" that a reader chooses at the beginning of the book, and which is used as a basis for questions throughout the rest of the book.

About the Author

Warren B. Powell, PhD, is Professor Emeritus of Operations Research and Financial Engineering at Princeton University, where he taught for 39 years.

Learn More

We have updated our privacy policy. Click here to read our full policy.