Applying reinforcement learning on real-world data with practical examples in Python

Author(s)

    • Osborne, Philip
    • Singh, Kajal
    • Taylor, Matthew E.

Bibliographic Information

Applying reinforcement learning on real-world data with practical examples in Python

Philip Osborne, Kajal Singh, Matthew E. Taylor

(Synthesis lectures on artificial intelligence and machine learning, #52)

Morgan & Claypool, c2022

  • : pbk

Available at  / 1 libraries

Search this Book/Journal

Note

Includes bibliographical references (p. 87-89)

Description and Table of Contents

Description

Reinforcement learning is a powerful tool in artificial intelligence in which virtual or physical agents learn to optimize their decision making to achieve long-term goals. In some cases, this machine learning approach can save programmers time, outperform existing controllers, reach super-human performance, and continually adapt to changing conditions. This book argues that these successes show reinforcement learning can be adopted successfully in many different situations, including robot control, stock trading, supply chain optimization, and plant control. However, reinforcement learning has traditionally been limited to applications in virtual environments or simulations in which the setup is already provided. Furthermore, experimentation may be completed for an almost limitless number of attempts risk-free. In many real-life tasks, applying reinforcement learning is not as simple as (1) data is not in the correct form for reinforcement learning, (2) data is scarce, and (3) automation has limitations in the real-world. Therefore, this book is written to help academics, domain specialists, and data enthusiast alike to understand the basic principles of applying reinforcement learning to real-world problems. This is achieved by focusing on the process of taking practical examples and modeling standard data into the correct form required to then apply basic agents. To further assist with readers gaining a deep and grounded understanding of the approaches, the book shows hand-calculated examples in full and then how this can be achieved in a more automated manner with code. For decision makers who are interested in reinforcement learning as a solution but are not technically proficient we include simple, non-technical examples in the introduction and case studies section. These provide context of what reinforcement learning offer but also the challenges and risks associated with applying it in practice. Specifically, the book illustrates the differences between reinforcement learning and other machine learning approaches as well as how well-known companies have found success using the approach to their problems.

Table of Contents

Background and Definitions.- Reinforcement Learning Theory.- A Robot Cleaner Example.- The Classroom Environment.- Industry Applications.- Conclusion.- Bibliography.- Authors' Biographies.

by "Nielsen BookData"

Related Books: 1-1 of 1

Details

  • NCID
    BC16808877
  • ISBN
    • 9783031791666
  • Country Code
    us
  • Title Language Code
    eng
  • Text Language Code
    eng
  • Place of Publication
    [San Rafael, Calif.]
  • Pages/Volumes
    xvii, 92 p.
  • Size
    24 cm
  • Parent Bibliography ID
Page Top