Quantitative Methods and Applications in GIS

Quantitative Methods and Applications in GIS
  • e-Book: 304 pages
  • Also available in Hardback
  • Published: September 2010
  • ISBN: 978-1-4200042-8-1
  • Publisher: CRC Press

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Quantitative Methods and Applications in GIS integrates GIS, spatial analysis, and quantitative methods to address various issues in socioeconomic studies and public policy. Methods range from basic regression analysis to advanced topics such as linear programming and system of equations. Applications vary from typical themes in urban and regional analysis - trade area analysis, accessibility measures, analysis of regional growth patterns, land use simulation - to issues related to crime and health analyses.

The book covers common tasks such as distance and travel time estimation, spatial smoothing and interpolation, and accessibility measures. It also covers the major issues that are encountered in spatial analysis including modifiable areal unit problems, rate estimate of rare events in small populations, and spatial autocorrelation.

Each chapter has one subject theme, introduces the method (or a group of related methods) most relevant to the theme, and then uses case studies to implement the method in a GIS environment.

Table of Contents

Getting Started with ArcGIS: Data Management and Basic

Spatial Analysis Tools

Spatial and Attribute Data Management in ArcGIS

Case Study 1A: Mapping Population Density Pattern in

Cuyahoga County, Ohio

Spatial Analysis Tools in ArcGIS: Queries, Spatial Joins and

Map Overlays

Case Study 1B: Extracting Census Tracts in City of Cleveland

and Analyzing Polygon Adjacency

Summary

Appendix 1. Importing and Exporting ASCII Files in ArcGIS

Measuring Distances and Time

Measures of Distance

Computing Network Distance and Time

Case Study 2: Measuring Distances between Counties and

Major Cities in Northeast China

Summary

Appendix 2. The Valued Graph Approach to the Shortest-Route

Problem

Spatial Smoothing and Spatial Interpolation

Spatial Smoothing

Case Study 3A: Analyzing Tai Place-Names in Southern China

by Spatial Smoothing

Point-Based Spatial Interpolation

Case Study 3B: Surface Modeling and Mapping of Tai Place-

Names in Southern China

Area-Based Spatial Interpolation

Case Study 3C: Aggregating Data from Census Tracts to

Neighborhoods and School Districts in Cleveland, Ohio

Summary

Appendix 3. Empirical Bayes (EB) Estimation for Spatial Smoothing

GIS-Based Trade Area Analysis and Applications in

Business Geography and Regional Planning

Basic Methods for Trade Area Analysis

Gravity Models for Delineating Trade Areas

Case Study 4A: Defining Fan Bases of Chicago Cubs and White

Sox

Case Study 4B: Defining Hinterlands of Major Cities in Northeast

China

Concluding Remarks

Appendix 4. Economic Foundation of the Gravity Model

GIS-Based Measures of Spatial Accessibility and

Application in Examining Healthcare Access

Issues on Accessibility

The Floating Catchment Area Methods

The Gravity-Based Method

Case Study 5: Measuring Spatial Accessibility to Primary Care

Physician in Chicago Region

Discussion and Remarks

Appendix 5. A Property for Accessibility Measures

Function Fittings by Regressions and Application in

Analyzing Urban and Regional Density Patterns

The Density Function Approach to Urban and Regional

Structures

Function Fittings for Monocentric Models

Nonlinear and Weighted Regressions in Function Fittings

Function Fittings for Polycentric Models

Case Study 6: Analyzing Urban Density Patterns in Chicago

Region

Discussion and Summary

Appendix 6A: Deriving Urban Density Functions

Appendix 6B: OLS Regression for a Linear Bivariate Model

Appendix 6C: Sample SAS Program for Monocentric Function

Fittings

Principal Components, Factor, and Cluster Analyses, and

Application in Social Area Analysis

Principal Components and Factor Analysis

Cluster Analysis

Social Area Analysis

Case Study 7: Social Area Analysis in Beijing

Discussion and Summary

Appendix 7A. Discriminant Function Analysis

Appendix 7B. Sample SAS Program for Factor and Cluster

Analyses

Geographic Approaches to Analysis of Rare Events in Small

Population and Application in Examining Homicide

Patterns

The Issue of Analyzing Rare Events in Small Population

The ISD and the Spatial Order Methods

The Scale-Space Clustering Method

Case Study 8: Examining the Relationship between Job Access

and Homicide Patterns in Chicago at Multiple Geographic Levels Based on the Scale-Space Melting Method

Summary

Appendix 8. The Poisson-based Regression Analysis

Spatial Cluster Analysis, Spatial Regression, and

Applications in Toponymical, Cancer, and Homicide Studies

Point-Based Spatial Cluster Analysis

Case Study 9A: Spatial Cluster Analysis of Tai Place Names in

Southern China

Area-Based Spatial Cluster Analysis

Case Study 9B: Spatial Cluster Analysis of Cancer Patterns in

Illinois

Spatial Regression

Case Study 9C: Spatial Regression Analysis of Homicide

Patterns in Chicago

Summary

Appendix 9: Spatial Filtering Methods for Regression Analysis

Linear Programming and Applications in Examining

Wasteful Commuting and Allocating Health Care Providers

Linear Programming (LP) and the Simplex Algorithm

Case Study 10A: Measuring Wasteful Commuting in Columbus,

Ohio

Integer Programming and Location-Allocation Problems

Case Study 10B: Allocating Healthcare Providers in Cuyahoga

County, Ohio

Discussion and Summary

Appendix 10A. Hamilton's Model on Wasteful Commuting

Appendix 10B. SAS Program for the LP Problem of Measuring

Wasteful Commuting

Solving a System of Linear Equations and Application in

Simulating Urban Structure

Solving a System of Linear Equations

The Garin-Lowry Model

Case Study 11: Simulating Population and Service Employment

Distributions in a Hypothetical City

Discussion and Summary

Appendix 11A: The Input-Output Model

Appendix 11B: Solving a System of Nonlinear Equations

Appendix 11C: FORTRAN Program for Solving the Garin-Lowry

Model