Description

Book Synopsis

In the five years since the publication of the first edition of Spatial Analysis: Statistics, Visualization, and Computational Methods, many new developments have taken shape regarding the implementation of new tools and methods for spatial analysis with R. The use and growth of artificial intelligence, machine learning and deep learning algorithms with a spatial perspective, and the interdisciplinary use of spatial analysis are all covered in this second edition along with traditional statistical methods and algorithms to provide a concept-based problem-solving learning approach to mastering practical spatial analysis. Spatial Analysis with R: Statistics, Visualization, and Computational Methods, Second Edition provides a balance between concepts and practicums of spatial statistics with a comprehensive coverage of the most important approaches to understand spatial data, analyze spatial relationships and patterns, and predict spatial processes.

New in the Second Edition:

  • Includes new practical exercises and worked-out examples using R
  • Presents a wide range of hands-on spatial analysis worktables and lab exercises
  • All chapters are revised and include new illustrations of different concepts using data from environmental and social sciences
  • Expanded material on spatiotemporal methods, visual analytics methods, data science, and computational methods
  • Explains big data, data management, and data mining

This second edition of an established textbook, with new datasets, insights, excellent illustrations, and numerous examples with R, is perfect for senior undergraduate and first-year graduate students in geography and the geosciences.



Table of Contents
The Context and Relevance of Spatial Analysis. Scientific Observations and Measurements in Spatial Analysis. Using Statistical Measures to Analyze Data Distributions. Exploratory Data Analysis, Visualization, and Hypothesis Testing. Analyzing Spatial Statistical Relationships. Engaging in Point Pattern Analysis. Engaging in Areal Pattern Analysis Using Global and Local Statistics. Engaging in Geostatistical Analysis. Data Science: Understanding Computing Systems and Analytics for Big Data

Spatial Analysis with R

Product form

£43.69

Includes FREE delivery

RRP £45.99 – you save £2.30 (5%)

Order before 4pm today for delivery by Sat 13 Dec 2025.

A Paperback by Tonny J. Oyana

1 in stock


    View other formats and editions of Spatial Analysis with R by Tonny J. Oyana

    Publisher: CRC Press
    Publication Date: 9/25/2023 12:00:00 AM
    ISBN13: 9780367532383, 978-0367532383
    ISBN10: 0367532387

    Description

    Book Synopsis

    In the five years since the publication of the first edition of Spatial Analysis: Statistics, Visualization, and Computational Methods, many new developments have taken shape regarding the implementation of new tools and methods for spatial analysis with R. The use and growth of artificial intelligence, machine learning and deep learning algorithms with a spatial perspective, and the interdisciplinary use of spatial analysis are all covered in this second edition along with traditional statistical methods and algorithms to provide a concept-based problem-solving learning approach to mastering practical spatial analysis. Spatial Analysis with R: Statistics, Visualization, and Computational Methods, Second Edition provides a balance between concepts and practicums of spatial statistics with a comprehensive coverage of the most important approaches to understand spatial data, analyze spatial relationships and patterns, and predict spatial processes.

    New in the Second Edition:

    • Includes new practical exercises and worked-out examples using R
    • Presents a wide range of hands-on spatial analysis worktables and lab exercises
    • All chapters are revised and include new illustrations of different concepts using data from environmental and social sciences
    • Expanded material on spatiotemporal methods, visual analytics methods, data science, and computational methods
    • Explains big data, data management, and data mining

    This second edition of an established textbook, with new datasets, insights, excellent illustrations, and numerous examples with R, is perfect for senior undergraduate and first-year graduate students in geography and the geosciences.



    Table of Contents
    The Context and Relevance of Spatial Analysis. Scientific Observations and Measurements in Spatial Analysis. Using Statistical Measures to Analyze Data Distributions. Exploratory Data Analysis, Visualization, and Hypothesis Testing. Analyzing Spatial Statistical Relationships. Engaging in Point Pattern Analysis. Engaging in Areal Pattern Analysis Using Global and Local Statistics. Engaging in Geostatistical Analysis. Data Science: Understanding Computing Systems and Analytics for Big Data

    Recently viewed products

    © 2025 Book Curl

      • American Express
      • Apple Pay
      • Diners Club
      • Discover
      • Google Pay
      • Maestro
      • Mastercard
      • PayPal
      • Shop Pay
      • Union Pay
      • Visa

      Login

      Forgot your password?

      Don't have an account yet?
      Create account