SULJE VALIKKO

avaa valikko

Hands-On Reinforcement Learning with R - Get up to speed with building self-learning systems using R 3.x
98,40 €
Packt Publishing Limited
Sivumäärä: 362 sivua
Asu: Pehmeäkantinen kirja
Julkaisuvuosi: 2019, 17.12.2019 (lisätietoa)
Implement key reinforcement learning algorithms and techniques using different R packages such as the Markov chain, MDP toolbox, contextual, and OpenAI Gym


Key Features


Explore the design principles of reinforcement learning and deep reinforcement learning models

Use dynamic programming to solve design issues related to building a self-learning system

Learn how to systematically implement reinforcement learning algorithms


Book Description
Reinforcement learning (RL) is an integral part of machine learning (ML), and is used to train algorithms. With this book, you'll learn how to implement reinforcement learning with R, exploring practical examples such as using tabular Q-learning to control robots.




You'll begin by learning the basic RL concepts, covering the agent-environment interface, Markov Decision Processes (MDPs), and policy gradient methods. You'll then use R's libraries to develop a model based on Markov chains. You will also learn how to solve a multi-armed bandit problem using various R packages. By applying dynamic programming and Monte Carlo methods, you will also find the best policy to make predictions. As you progress, you'll use Temporal Difference (TD) learning for vehicle routing problem applications. Gradually, you'll apply the concepts you've learned to real-world problems, including fraud detection in finance, and TD learning for planning activities in the healthcare sector. You'll explore deep reinforcement learning using Keras, which uses the power of neural networks to increase RL's potential. Finally, you'll discover the scope of RL and explore the challenges in building and deploying machine learning models.




By the end of this book, you'll be well-versed with RL and have the skills you need to efficiently implement it with R.


What you will learn


Understand how to use MDP to manage complex scenarios

Solve classic reinforcement learning problems such as the multi-armed bandit model

Use dynamic programming for optimal policy searching

Adopt Monte Carlo methods for prediction

Apply TD learning to search for the best path

Use tabular Q-learning to control robots

Handle environments using the OpenAI library to simulate real-world applications

Develop deep Q-learning algorithms to improve model performance


Who this book is for
This book is for anyone who wants to learn about reinforcement learning with R from scratch. A solid understanding of R and basic knowledge of machine learning are necessary to grasp the topics covered in the book.

Tuotetta lisätty
ostoskoriin kpl
Siirry koriin
LISÄÄ OSTOSKORIIN
Tuotteella on huono saatavuus ja tuote toimitetaan hankintapalvelumme kautta. Tilaamalla tämän tuotteen hyväksyt palvelun aloittamisen. Seuraa saatavuutta.
Myymäläsaatavuus
Helsinki
Tapiola
Turku
Tampere
Hands-On Reinforcement Learning with R - Get up to speed with building self-learning systems using R 3.xzoom
Näytä kaikki tuotetiedot
ISBN:
9781789616712
Sisäänkirjautuminen
Kirjaudu sisään
Rekisteröityminen
Oma tili
Omat tiedot
Omat tilaukset
Omat laskut
Lisätietoja
Asiakaspalvelu
Tietoa verkkokaupasta
Toimitusehdot
Tietosuojaseloste