Description

Book Synopsis
Features coverage of classical statistical methods, probability and statistical testing, student exercises to facilitate classroom use, exercises featuring interactive ArcView Avenue scripts, and an overview of compatible spatial analytical functions in ArcGIS 9.0.

Table of Contents
PREFACE.

ACKNOWLEDGMENTS.

1 INTRODUCTION.

1.1 Why Statistics and Sampling?

1.2 What Are Special about Spatial Data?

1.3 Spatial Data and the Need for Spatial Analysis/ Statistics.

1.4 Fundamentals of Spatial Analysis and Statistics.

1.5 ArcView Notes—Data Model and Examples.

PART I: CLASSICAL STATISTICS.

2 DISTRIBUTION DESCRIPTORS: ONE VARIABLE (UNIVARIATE).

2.1 Measures of Central Tendency.

2.2 Measures of Dispersion.

2.3 ArcView Examples.

2.4 Higher Moment Statistics.

2.5 ArcView Examples.

2.6 Application Example.

2.7 Summary.

3 RELATIONSHIP DESCRIPTORS: TWO VARIABLES (BIVARIATE).

3.1 Correlation Analysis.

3.2 Correlation: Nominal Scale.

3.3 Correlation: Ordinal Scale.

3.4 Correlation: Interval /Ratio Scale.

3.5 Trend Analysis.

3.6 ArcView Notes.

3.7 Application Examples.

4 HYPOTHESIS TESTERS.

4.1 Probability Concepts.

4.2 Probability Functions.

4.3 Central Limit Theorem and Confidence Intervals.

4.4 Hypothesis Testing.

4.5 Parametric Test Statistics.

4.6 Difference in Means.

4.7 Difference Between a Mean and a Fixed Value.

4.8 Significance of Pearson’s Correlation Coefficient.

4.9 Significance of Regression Parameters.

4.10 Testing Nonparametric Statistics.

4.11 Summary.

PART II: SPATIAL STATISTICS.

5 POINT PATTERN DESCRIPTORS.

5.1 The Nature of Point Features.

5.2 Central Tendency of Point Distributions.

5.3 Dispersion and Orientation of Point Distributions.

5.4 ArcView Notes.

5.5 Application Examples.

6 POINT PATTERN ANALYZERS.

6.1 Scale and Extent.

6.2 Quadrat Analysis.

6.3 Ordered Neighbor Analysis.

6.4 K-Function.

6.5 Spatial Autocorrelation of Points.

6.6 Application Examples.

7 LINE PATTERN ANALYZERS.

7.1 The Nature of Linear Features: Vectors and Networks.

7.2 Characteristics and Attributes of Linear Features.

7.3 Directional Statistics.

7.4 Network Analysis.

7.5 Application Examples.

8 POLYGON PATTERN ANALYZERS.

8.1 Introduction.

8.2 Spatial Relationships.

8.3 Spatial Dependency.

8.4 Spatial Weights Matrices.

8.5 Spatial Autocorrelation Statistics and Notations.

8.6 Joint Count Statistics.

8.7 Spatial Autocorrelation Global Statistics.

8.8 Local Spatial Autocorrelation Statistics.

8.9 Moran Scatterplot.

8.10 Bivariate Spatial Autocorrelation.

8.11 Application Examples.

8.12 Summary.

APPENDIX: ArcGIS Spatial Statistics Tools.

ABOUT THE CD-ROM.

INDEX.

Statistical Analysis of Geographic Information

    Product form

    £114.26

    Includes FREE delivery

    RRP £126.95 – you save £12.69 (9%)

    Order before 4pm tomorrow for delivery by Tue 7 Jul 2026.

    A Hardback by David W. S. Wong, Jay Lee

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Statistical Analysis of Geographic Information by David W. S. Wong

      Publisher: John Wiley & Sons Inc
      Publication Date: 11/11/2005
      ISBN13: 9780471468998, 978-0471468998
      ISBN10: 0471468991
      Also in:
      Geography

      Description

      Book Synopsis
      Features coverage of classical statistical methods, probability and statistical testing, student exercises to facilitate classroom use, exercises featuring interactive ArcView Avenue scripts, and an overview of compatible spatial analytical functions in ArcGIS 9.0.

      Table of Contents
      PREFACE.

      ACKNOWLEDGMENTS.

      1 INTRODUCTION.

      1.1 Why Statistics and Sampling?

      1.2 What Are Special about Spatial Data?

      1.3 Spatial Data and the Need for Spatial Analysis/ Statistics.

      1.4 Fundamentals of Spatial Analysis and Statistics.

      1.5 ArcView Notes—Data Model and Examples.

      PART I: CLASSICAL STATISTICS.

      2 DISTRIBUTION DESCRIPTORS: ONE VARIABLE (UNIVARIATE).

      2.1 Measures of Central Tendency.

      2.2 Measures of Dispersion.

      2.3 ArcView Examples.

      2.4 Higher Moment Statistics.

      2.5 ArcView Examples.

      2.6 Application Example.

      2.7 Summary.

      3 RELATIONSHIP DESCRIPTORS: TWO VARIABLES (BIVARIATE).

      3.1 Correlation Analysis.

      3.2 Correlation: Nominal Scale.

      3.3 Correlation: Ordinal Scale.

      3.4 Correlation: Interval /Ratio Scale.

      3.5 Trend Analysis.

      3.6 ArcView Notes.

      3.7 Application Examples.

      4 HYPOTHESIS TESTERS.

      4.1 Probability Concepts.

      4.2 Probability Functions.

      4.3 Central Limit Theorem and Confidence Intervals.

      4.4 Hypothesis Testing.

      4.5 Parametric Test Statistics.

      4.6 Difference in Means.

      4.7 Difference Between a Mean and a Fixed Value.

      4.8 Significance of Pearson’s Correlation Coefficient.

      4.9 Significance of Regression Parameters.

      4.10 Testing Nonparametric Statistics.

      4.11 Summary.

      PART II: SPATIAL STATISTICS.

      5 POINT PATTERN DESCRIPTORS.

      5.1 The Nature of Point Features.

      5.2 Central Tendency of Point Distributions.

      5.3 Dispersion and Orientation of Point Distributions.

      5.4 ArcView Notes.

      5.5 Application Examples.

      6 POINT PATTERN ANALYZERS.

      6.1 Scale and Extent.

      6.2 Quadrat Analysis.

      6.3 Ordered Neighbor Analysis.

      6.4 K-Function.

      6.5 Spatial Autocorrelation of Points.

      6.6 Application Examples.

      7 LINE PATTERN ANALYZERS.

      7.1 The Nature of Linear Features: Vectors and Networks.

      7.2 Characteristics and Attributes of Linear Features.

      7.3 Directional Statistics.

      7.4 Network Analysis.

      7.5 Application Examples.

      8 POLYGON PATTERN ANALYZERS.

      8.1 Introduction.

      8.2 Spatial Relationships.

      8.3 Spatial Dependency.

      8.4 Spatial Weights Matrices.

      8.5 Spatial Autocorrelation Statistics and Notations.

      8.6 Joint Count Statistics.

      8.7 Spatial Autocorrelation Global Statistics.

      8.8 Local Spatial Autocorrelation Statistics.

      8.9 Moran Scatterplot.

      8.10 Bivariate Spatial Autocorrelation.

      8.11 Application Examples.

      8.12 Summary.

      APPENDIX: ArcGIS Spatial Statistics Tools.

      ABOUT THE CD-ROM.

      INDEX.

      Recently viewed products

      © 2026 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