9780367575861-0367575868-Statistical Reinforcement Learning (Chapman & Hall/CRC Machine Learning & Pattern Recognition)

Statistical Reinforcement Learning (Chapman & Hall/CRC Machine Learning & Pattern Recognition)

ISBN-13: 9780367575861
ISBN-10: 0367575868
Edition: 1
Author: Masashi Sugiyama
Publication date: 2020
Publisher: Routledge
Format: Paperback 206 pages
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Book details

ISBN-13: 9780367575861
ISBN-10: 0367575868
Edition: 1
Author: Masashi Sugiyama
Publication date: 2020
Publisher: Routledge
Format: Paperback 206 pages

Summary

Statistical Reinforcement Learning (Chapman & Hall/CRC Machine Learning & Pattern Recognition) (ISBN-13: 9780367575861 and ISBN-10: 0367575868), written by authors Masashi Sugiyama, was published by Routledge in 2020. With an overall rating of 4.4 stars, it's a notable title among other Environmental Economics (Economics, Statistics, Education & Reference, Data Mining, Databases & Big Data, Game Programming, Programming) books. You can easily purchase or rent Statistical Reinforcement Learning (Chapman & Hall/CRC Machine Learning & Pattern Recognition) (Paperback) from BooksRun, along with many other new and used Environmental Economics books and textbooks. And, if you're looking to sell your copy, our current buyback offer is $0.3.

Description

Reinforcement learning is a mathematical framework for developing computer agents that can learn an optimal behavior by relating generic reward signals with its past actions. With numerous successful applications in business intelligence, plant control, and gaming, the RL framework is ideal for decision making in unknown environments with large amounts of data.
Supplying an up-to-date and accessible introduction to the field, Statistical Reinforcement Learning: Modern Machine Learning Approaches presents fundamental concepts and practical algorithms of statistical reinforcement learning from the modern machine learning viewpoint. It covers various types of RL approaches, including model-based and model-free approaches, policy iteration, and policy search methods.
Covers the range of reinforcement learning algorithms from a modern perspective
Lays out the associated optimization problems for each reinforcement learning scenario covered
Provides thought-provoking statistical treatment of reinforcement learning algorithms
The book covers approaches recently introduced in the data mining and machine learning fields to provide a systematic bridge between RL and data mining/machine learning researchers. It presents state-of-the-art results, including dimensionality reduction in RL and risk-sensitive RL. Numerous illustrative examples are included to help readers understand the intuition and usefulness of reinforcement learning techniques.
This book is an ideal resource for graduate-level students in computer science and applied statistics programs, as well as researchers and engineers in related fields.

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