10 a.m. - noon
Instructor: Dr. Josefina Lacasa
Capacity: 40 participants
The use of Bayesian models for applied data analysis in biological sciences is increasing due to their flexibility to tailor said data analysis to a given problem. Due to its widespread use, understanding Bayesian statistics has become as important as classic methods such as t-tests, regression, and ANOVA. Data generated from designed experiments can benefit from using Bayesian models, because they enable researchers (i) to build bespoke statistical models tailored to a specific research question or application, and (ii) to obtain fully probabilistic and statistically valid inference not only on model components (e.g., slope parameters) but also on other indirect quantities of interest (e.g., probability yield is below a certain threshold), and (iii) to adapt the experiment design based on intermediate results and maximize the information gained from an experiment. In this workshop, we aim to enable practitioners to understand the basics of Bayesian models, demystify standard Bayesian techniques such as Markov chain Monte Carlo, and provide real-world, hands-on agricultural data examples where Bayesian models enable new and essential insights from data generated by designed experiments. This workshop is co-hosted by the Department of Statistics.
Since model applications will be demonstrated using R software, prior experience will be helpful but not required. Attendees are encouraged to bring their laptops, but they can still follow the content regardless.
For questions, please contact Dr. Josefina Lacasa at
lacasa@ksu.edu.