SGBB22001U Ecological Data Analysis with R (REcoStat)
BSc Programme in Biology - restricted elective
A good working knowledge of statistical data analysis and visualization is fundamental for most job functions within ecology, including conservation planning, environmental assessments or scientific research. It is also a necessary basis for being able to do analytical or field-based MSc thesis projects. This course aims at giving biology students the tools to perform independent data analysis for projects in ecology, and to understand and critically debate statistical data analysis from published reports and scientific papers. The main tool used in the course is the scientific programming language R, which is the de facto standard for ecological data analysis. The format mixes lectures and discussions with group exercises, and the students will work independently on data analysis projects. The course is also intended to be taken together with the first block of a BSc project, to help the students who wish to incorporate an analytical component in their BSc.
After completion of the course, the students are expected to be able to:
Competences:
- Work independently to perform statistical analyses in ecology, including identifying scientific hypotheses and testing them statistically. This includes understanding the biological background and significance of different statistical tests and outcomes
- Critically debate and replicate published analyses
- Know how to learn new types of analysis in R and feel confident doing it
Skills:
- Use R to load data sets and do basic data analysis tasks
- Write their own simple functions
- Use the R documentation to find solutions for coding problems
- Produce informative publication-quality figures, such as scatter plots, histograms and bar plots
- Test and summarize statistical models of ecological data
- Identify the assumptions of statistical tests and test if they are met
- Use standard linear regression, and derived techniques, such as generalized linear models
- Use the Rmarkdown syntax to produce a lab log of the analytical processes in a statistical analysis
Knowledge:
- Describe the basic elements of the R programming language
- Know the basic structure of academic programming languages
- Give an overview of the statistical methods available for analysis of observational data
- Explain the concept of pseudoreplication and detail the possible methods to deal with it
- Know functions implemented in R packages such as vegan and lme4 for ecological data analysis, tidyverseggplot2 for data handling and visualization
Handouts at the course
Text book: Kabacoff: R in Action – Data Analysis and Graphics with R. 3rd edition.
- Category
- Hours
- Lectures
- 21
- Class Instruction
- 7
- Preparation
- 115
- Practical exercises
- 28
- Project work
- 35
- Total
- 206
The course emphasizes the use of peer-feedback, e.g., on the weekly reports. In addition the teachers give some formative feedback, both individually and collectively.
Credit transfer students apply here
Other external students apply here
- Credit
- 7,5 ECTS
- Type of assessment
- Portfolio
- Type of assessment details
- Each student makes an independent project (from Tuesday to Thursday including class hours), which is assessed based on an oral presentation (about 5 minutes, 3 slides).
- Exam registration requirements
Hand-in of all weekly reports. Attendance of 80% of exercises.
- Aid
- All aids allowed
The use of generative AI is not allowed in answering the exam
- Marking scale
- passed/not passed
- Censorship form
- No external censorship
Several internal examiners
- Re-exam
Same as ordinary exam.
If 10 or fewer students have registered for the re-exam, the examination form will be changed to an oral examination, 20 minutes with 20 minutes preparation time. All aids allowed during the preparation.
If the requirements for participating in the exam is not fulfilled before the exam the student should hand in a report detailing an independent data analysis of an ecological dataset in R, presented in RMarkdown with figures and a discussion of key assumptions. The volume of the report should correspond to ~5 A4 pages. The report should be handed in no later than three weeks before the exam. This report may not be part of the exam.
Criteria for exam assesment
See learning outcomes.
Course information
- Language
- English
- Course code
- SGBB22001U
- Credit
- 7,5 ECTS
- Level
- Bachelor
- Duration
- 1 block
- Placement
- Block 3
- Schedule
- C
- Course capacity
- 50
Study board
- Study Board for the Biological Area
Contracting department
- Globe
Contracting faculty
- Faculty of Health and Medical Sciences
Course Coordinators
- Michael Krabbe Borregaard (mkborregaard@sund.ku.dk)
Lecturers
SNM