GEOG 279 Course Overview

Causal Analysis in Space

Instructor Information

Course Description

GEOG 279: Applied Statistics for Geography (Introduction to Causal Analysis in Space) focuses on developing skills in causal analysis within spatial contexts. This course introduces students to key concepts in causal inference, statistical methodologies, and their applications in spatial analysis. Throughout the quarter, students will engage with various statistical techniques, including randomized control trials (RCT), matching, synthetic controls, differences-in-differences (DID), instrumental variables, regression discontinuity design, and machine learning (ML).

Course Objectives

The course will involve a series of readings, assignments, and practical applications to deepen the understanding of causal analysis in geography. Students will learn to:

Course Goals

By the end of this course, students will be able to:

  1. Interpret and conduct causal analyses in spatial data.
  2. Implement various statistical methods for causal inference in geographical research.
  3. Apply statistical tools and methodologies to real-world spatial problems.
  4. Develop skills in presenting and discussing statistical findings related to causal analysis.
  5. Critically assess and apply different causal inference methods to geographic data.

Grade

Assignments details are outlined under the Assignments tab. The grade breakdown is as follows: