Semester 1, 2026-2027
Type of courseMethodological and Practical Courses
DateOctober 14, 2026
LocationUtrecht University
1 day
Maximum number of participants40
ECTS0.5 EC will be appointed for participation in the complete course
StaffRebecca Kuiper (UU)
Content
Because of the ongoing replication crisis, researchers increasingly recognize the need for alternatives to traditional null-hypothesis testing. This workshop addresses such methods by introducing participants to:
Theory-based, informative hypotheses
Model selection methods for evaluating such hypotheses, specifically the Bayes factor and the AIC-type information criterion GORIC(A).
Instead of coming to a dichotomous decision, one can now quantity the (relative) support for the hypothesis of interest.
The workshop emphasizes concepts and practical examples rather than mathematical formulas. During the lecture, participants will engage in “hands-on” sessions, and we end with a lab meeting. We will make use of the R packages bain and restriktor (particularly the goric function). For those who prefer not to work with R, equivalent lab materials will also be provided in JASP.
Learning goals
Learn to set up, apply, and interpret informative hypothesis evaluation (using Bayesian model selection and GORIC(A)).
Course material
The course materials can be downloaded from https://github.com/rebeccakuiper/Tutorials/tree/main/Workshops/KLI%20course.
This will be up to date just before the start of the course.
Preparation
You can prepare by installing or updating - before the start of the course - the software you like to use:
- Install R, RStudio, and the R packages bain and restriktor;
R can be downloaded here: https://www.r-project.org/
RStudio can be downloaded here: https://docs.posit.co/ide/user/#rstudio-ide-oss-downloads
If you need to refresh your R skills, do the R hands-on mini course (‘R hands-on mini course.pdf’) available via the course material link above; or check out https://bookdown.org/ndphillips/YaRrr/.
- If you prefer not to work with R, you can use JASP: https://jasp-stats.org/.
Program
09.45-10.00 Welcome with tea/coffee
10.00-12.00 Lecture and hands-on: Introduction to informative hypotheses and their evaluation
12.00-1.00 Lunch
1.00-2.15 Lecture and hands-on continued
2.15-2.30 Tea/coffee break
2.30-4.30 Lab meeting: work on exercises and possibly, if available, apply the learned methods to your own data