Program for 20 April
We start in room MA4, Mathematikhusets Annex, Sölvegatan 20. See the map. We also have a booklet with abstracts maps and tips.
[for the tutorial on 19 April go here]
08.30-9.00 Registration
09.00-9.10 Welcome and an overview of Bayesian activities in Lund: Umberto Picchini and Ullrika Sahlin
9.10-10.05 Keynote talk Darren Wilkinson: Hierarchical modelling of genetic interaction in budding yeast
10.05-10.30 coffee break
Bayesian Analysis I
10.30-10.55 Stefan Wiens, Making the most of your ANOVAs: From NHST to Bayesian analyses
10.55-11.20 Martin Stjernman, Joint species modelling -- beautiful in theory, tricky in practice
11.20-11.45 Shravan Vasishth, Finite mixture modeling: a case study involving retrieval processes in sentence comprehension
11.45-13.05 Lunch break (not included in the registration)
13.05-14.00 Keynote talk Richard McElreath: Understanding Bayesian statistics without frequentist language
Decisions and Teaching
14.00-14.25 Judith Bütepage: Learning to make decisions under uncertainty
14.25-14.50 Mark Andrews: Teaching Bayesian Data Analysis to Social Scientists
14.50-15.10 coffee break
Parallel Sessions
Bayesian Analysis II (room MA4)
15.10-15.35 Thomas Hamelrick: Potentials of mean force for protein structure prediction: from hack to math
15.35-16.00 Junpeng Lao: Statistical Inferences of Eye movement data using Bayesian smoothing
Teaching Bayes (room MA6)
15.10-15.35 Richard Torkar: Convincing researchers to transition to Bayesian statistics - the case of software engineering
15.35-16.00 Bertil Wegmann: Experiences from teaching Bayesian inference to students familiar with frequentist statistics
all back in room MA7 for the final session
Bayesian Analysis III (room MA4)
16.05-16.30 Erik Lindström: Multilevel Monte Carlo methods for inference in multivariate diffusions
16.30-16.55 Ullrika Sahlin: Using expert's knowledge in Bayesian analysis