The course will employ a variety of instructional methods to accomplish its objectives, including some of the following: lecture, labs, observation, analysis and interpretation of geographic data, multimedia, individual and/or team projects and small group discussions.
- Introduction
- quantitative geography
- statistics
- nominal, ordinal, interval data
- primary and secondary data
- measurement and collection of data
- Visualization of data
- tables, graphs and maps
- Descriptive statistics
- central tendency
- variability
- Spatial data analysis
- areal and point data
- directional statistics
- Probability theory and distributions
- random variables
- discrete probability distributions
- continuous probability distributions
- Sampling and populations
- types of samples
- random sampling
- sampling distributions
- geographic sampling
- Parametric inferential statistics
- estimation
- hypothesis testing
- t-tests
- confidence intervals
- statistical significance
- Nonparametric statistics
- comparison of parametric and nonparametric tests
- examples of nonparametric tests
- Correlation
- Pearson’s product-moment correlation coefficient
- nonparametric correlation coefficients
- spatial autocorrelation
- Regression
- simple linear regression model
- goodness of fit
- assumptions of linear regression
- non-linear regression models
- multiple regression analysis
- Analysis of Variance (ANOVA)
- Chi-Square testing
- Time series analysis
- characteristics of time series
- data homogeneity
- smoothing
At the conclusion of the course the successful student will be able to:
- Explain the role of quantitative information in geographic research and applications
- Demonstrate an understanding of basic descriptive statistics and regression methods as they apply to problem solving in Geography
- Perform basic data manipulation, statistical calculations and graphical presentation by hand, and using computer spreadsheets or statistical software (e.g. Excel, SPSS)
- Evaluate the roles of probability theory and sampling distributions in drawing inferences about populations based on samples
- Identify when and where statistical procedures are appropriate
The evaluation will be based on course objectives and will be carried out in accordance with ÁñÁ«ÊÓƵ policy. The instructor will provide a written course outline with specific evaluation criteria during the first week of classes.
Evaluation will include some of the following:
- Laboratory assignments with a combined value of up to 50%.
- Multiple choice and short answer exams with a combined value of up to 50%.
- A term project with a value of up to 25%.
An example of a possible evaluation scheme would be:
Laboratory Assignments | 40% |
Midterm Exam | 25% |
Final Exam | 25% |
Term Project | 10% |
Total | 100% |
Texts will be updated periodically. Typical examples are:
- Shafer, D.S. and Z. Zhang (2012). Beginning Statistics. Open source textbook: http://2012books.lardbucket.org/
- Haan, M. (2013). An Introduction to Statistics for Candian Social Scientists. Oxford.
- Harris, R. and C. Jarvis (2011). Statistics for Geography and Environmental Science. Pearson
- Rogerson, P.A. (2010). Statistical Methods for Geography: A Student's Guide. Sage
One 1100-level Geography course, or permission of instructor