have basic skills in statistical programming in the R language
be familiar with data wrangling and graphical data exploration techniques
be familiar with linear models and their extensions
be familiar with different types of model selection
Course contents
This course will introduce the students to working with real-life data common and statistical methods used in evolution and ecology. The course focuses on developing robust and repeatable workflows for data wrangling, data visualisation and statistical analysis. The students will get an introduction to basic linear models, mode selection and more advanced methods such as Generalised Linear Models and Mixed Models. Throughout the course students will use the programming language R, the RStudio package, and Git.
Teaching methods
Classes will be a mixture of lectures and practicals designed to build required skills for future modules and to perform analyses frequently encountered in the biological literature. Instruction will be given in English. More information will be given in Canvas at the start of the course. The estimated student workload in this course is 135 hours.
Examination requirements
Approval of reports from all computer laboratory exercises. More information about the reports and exercises is given in Canvas by the start of the course.
Assessment methods and criteria
Portfolio. Graded assessment A-F. More information will be given in Canvas at the start of the course.
Evaluation
The person responsible for the course, in consultation with the student representative, decides the method of evaluation and whether the courses will have a midterm- or end of term evaluation, see also the Quality System, section 4.1. Information about evaluation method for the course will be posted on Canvas.