Lecture Series "What is Data Science?": "Bayesian Workflow" by Andrew Gelman (November 9th)

The research platform "Data Science @ Uni Vienna" continues its lecture series, to which we would like to cordially invite you. Andrew Gelman will give a talk titled “Bayesian Workflow”, he is one of the most distinguished scientists regarding bayesian statistics and is working and teaching at Columbia University, New York.

When: November 9th 2018, 16.30-18.30

Where: Kleiner Festsaal, Universitätsring 1, 1010 Wien

About: Methods in statistics and data science are often framed as solutions to particular problems, in which a particular model or method is applied to a dataset. But good practice typically requires multiplicity, in two dimensions: fitting many different models to better understand a single dataset, and applying a method to a series of different but related problems. To understand and make appropriate inferences from real-world data analysis, we should account for the set of models we might fit, and for the set of problems to which we would apply a method. This is known as the reference set in frequentist statistics or the prior distribution in Bayesian statistics. We shall discuss recent research of ours that addresses these issues, involving the following statistical ideas: Type M errors, the multiverse, weakly informative priors, Bayesian stacking and cross-validation, simulation-based model checking, divide-and-conquer algorithms, and validation of approximate computations.

We are look forward to seeing you!

Registration for the event is not mandatory, but it will help us with the organization. Please sign up here: