Advanced Quantitative Methods
Dr Jack Blumenau (Department of Political Science)
One 3,000 word research paper
About this course
The course builds on the introductory level of statistics and probability theory and introduces students to concepts and techniques essential to the analysis of modern social science data. The goal of the course is to teach students to understand and confidently apply various statistical methods and research designs that are essential for modern day data analysis. Students will also learn data analytic skills using the statistical software package R. This combination provides students with the skillset that is increasingly required by employers in today's highly competitive job market.
This is an advanced course intended for students who have already had some training in quantitative methods for data analysis. An introduction to statistics or econometrics at undergraduate level would serve as a very useful foundation for this course, although no formal prerequisites are required. Familiarity with computer programming or database structures is a benefit, but not formally required. If you are unsure whether your prior statistical training is sufficient to take this module, please contact the module tutor for confirmation.
If you do not have the required prerequisites but still wish to take the module, you should work through any good textbook for introductory level statistics with R. For example, Gelman, Andrew, and Jennifer Hill (2007). Data Analysis Using Regression and Multilevel/Hierarchical Models. Cambridge: Cambridge University Press.
that this module is only available to SPP students. Students taking this course are not permitted to take PUBL0055 Introduction to Quantitative Methods.