SemesterFall Semester, 2023
DepartmentMA Program of Public Administration, First Year PhD Program of Public Administration, First Year MA Program of Public Administration, Second Year PhD Program of Public Administration, Second Year
Course NameGIS for Social Science
InstructorLIAO HSIN-CHUNG
Credit3.0
Course TypeElective
Prerequisite
Course Objective
Course Description
Course Schedule































































































































































週次



Week



課程主題



Topic



課程內容與指定閱讀



Content and Reading Assignment



教學活動與作業



Teaching Activities and Homework



學習投入時間



Student workload expectation



課堂講授



In-class Hours



課程前後



Outside-of-class Hours



9/14



 




  • Introduction

  • Course Overview

  • What is GIS

  • Understanding ArcGIS & GIS Terminology



                       No Class




  • ArcGIS Basics

  • Loading Data

  • Scales

  • Navigation

  • Online Help



3



1



9/21




  • Making Maps




  • Microsoft Team link:



https://teams.microsoft.com/l/meetup-join/19%3ae648cdedd23d4606ae21aa120cb94d14%40thread.tacv2/1694523595773?context=%7b%22Tid%22%3a%2235157425-5c3c-4672-aaa4-68fb6a8c9612%22%2c%22Oid%22%3a%22681805e4-8520-4468-a9be-1c83cf6791ff%22%7d



 




  • GIS and Mapping: Pitfalls for Planners(Kent & Klosterman 2000)




  • Types of Maps

  • Elements of Cartography



3



3



9/28




  • Working with Maps & Data I




  • Making a Place for Space: Spatial Thinking in the Social Sciences (Logan 2012)




  • Attribute Query

  • Joining & Relating

  • Data Classification

  • Projection



3



3



10/5




  • Working with Maps & Data II




  • GIS, Public Service_PA (Haque, 2003)

  • Four Ways We Can Improve Policy Diffusion Research_PA(Fabrizio Gilardi1, 2016)




  • Attribute Query

  • Joining & Relating

  • Data Classification

  • Projection



3



3



10/12




  • Working with Census Data I




  • GIS Education in U S Public Administration Programs Preparing the Next Generation of Public Servants (Nancy J. Obermeyer, Laxmi Ramasubramanian & Lisa Warnecke, 2016)




  • Understanding Census Data & Geometry

  • Accessing Census Data



3



3



10/19




  • Working with Census Data II




  • Spatial data mining and geographic knowledge discovery—An introduction (Mennis & Guo 2009)

  • Spatial analysis and GIS in the study of COVID-19. A review_PH(Ivan Franch-Pardo a,?, Brian M. Napoletano b,?, Fernando Rosete-Verges a, Lawal Billa c, 2020)




  • Interpreting Census Variables

  • Charts & Graphs for Data Display



3



3



10/26




  • Geoprocessing




  • PPGIS_PA (Ganapati, 2011)




  • Geoprocessing Tools: Buffers, Clips, Unions



3



3



11/2




  • Address Mapping




  • Geographic Information Systems and the Spatial Dimensions of American Politics (Cho & Gimpel 2012)




  • Geocoding



3



3


11/9

  • Final Project Proposal Discussion




  • None




  • Individual Discussion in Office


   

11/16




  • Network Analysis




  • Measures of Spatial Accessibility to Health Care in a GIS Environment (Luo & Qi 2003)

  • Accessibility, equity and health care_PH(Tijs Neutens, 2015)




  • Spatial Accessibility



3



3



11/23




  • Identifying Statistical Clusters and Exploratory Spatial Data Analysis (ESDA) of Social Data I




  • Richardson in the Information Age: Geographic Information Systems and Spatial Data in International Studies (Gleditsch & Weidmann2012)

  • Spatial Big Data Analysis of Political Risks_PS(Chuchu Zhang 1,2,y, Chaowei Xiao 3,*,y and Helin Liu, 2019)

  • Explore Spatial Data with GeoDa (Anselin 2003)




  • Spatial Weight Matrix

  • Spatial Autocorrelation

  • Exploratory Spatial Data Analysis



3



3



11/30




  • Identifying Statistical Clusters and Exploratory Spatial Data Analysis (ESDA) of Social Data II




  • Coproduction of Government Services and the New Information Technology: Investigating the Distributional Biases (Clark, Brudney & Jang 2013)

  •  Spatial spillover effects of corruption in Asian_PS(Masoud Khodapanah1 | Zahra Dehghan Shabani2 |

    Mohammad Hadi Akbarzadeh1 | Mahboubeh Shojaeian1, 2020)




  • Explore Spatial Data with GeoDa (Anselin 2003)




  • Exploratory Spatial Data Analysis




  • Spatial Weighted Regression



3



3



12/7




  • Spatial Heterogeneity




  • Poverty GWR_PH  (Tzai-Hung Wen1, Duan-Rung Chen2, Meng-Ju Tsai3, 2010)




  • Geographically Weighted Regression



3



3



12/14




  • Spatio-temporal Analysis




  • A Spatial Scan Statistic (Kuldorff 1997)




  • SaTScan User Guide (Kuldorff 2006)

  • Mapping the relational construction of people and places(Michael Donnelly, Sol Gamsu & Sam Whewall, 2020)

  • Qualitative GIS(Marianna Pavlovskaya, 2016)




  • SaTScan



3



3



12/21




  • Final Project Workshop




  • None




  • Open Lab



3



3



12/28




  • Final Project Presentation


 

  • Potluck (Drinks and Snacks)



3



3


1/4

  • Final Project Presentation


 

  • Potluck (Drinks and Snacks)


3 3

1/11




  • Final Exam


 

  • Take-Home Final Exam



0



6




 


Teaching Methods
Teaching Assistant

TBA


Requirement/Grading

The final semester grade will be computed as:




  • 10% for the oral presentation of the final project

  • 40% for the  final project (3000-5000 words) 

  • 15% for the take-home final exam

  • 15% for the assignment (Presentation of the assigned article and the output of the Lab practice)

  • 10% for the classroom discussion

  • 10% for the participation


Textbook & Reference

 



 



See the Schedule.


Urls about Course
https://1drv.ms/u/s!AoacP5CovPLS2CUynrfq6Bq6cZbH?e=lu8bw5
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