Updated: Wed, 10/02/2024 - 13:45

From Saturday, Oct. 5 through Monday, Oct. 7, the Downtown and Macdonald Campuses will be open only to McGill students, employees and essential visitors. Many classes will be held online. Remote work required where possible. See Campus Public Safety website for details.


Du samedi 5 octobre au lundi 7 octobre, le campus du centre-ville et le campus Macdonald ne seront accessibles qu’aux étudiants et aux membres du personnel de l’Université McGill, ainsi qu’aux visiteurs essentiels. De nombreux cours auront lieu en ligne. Le personnel devra travailler à distance, si possible. Voir le site Web de la Direction de la protection et de la prévention pour plus de détails.

Event

Workshop: Treating missing data in bayesian models

Monday, April 8, 2024 10:00to12:00

Workshop Overview: The goal of this workshop is to serve as an introduction to Bayesian models and tools for analyzing missing or partially observed data. Specifically, we will cover the different types of missing data that one can encounter when working on real problems and various approaches for analyzing the incomplete data under different assumptions.  We will begin by considering problems where observations for some characteristics are completely missing in the original dataset. Then we will address Bayesian models for partially observed values, e.g. for censored or measurement-error contaminated values.

Participants will get access to several worked examples written in STAN, NIMBLE, and other R packages (e.g. mitools) that are often used in the analysis of data with missing values. 

At the end of this workshop, you will be able to:
   - Understand the different kinds of assumptions one can choose from for missing data models with completely missing observations;
   - Understand the importance of incorporating appropriate uncertainty in any analysis where there are missing values;
   - Identify different patterns of missing values for multivariate datasets and how they affect analyses;
   - Identify different ways that data can be partially observed and the choices of assumptions for how that occurs;
   - Fit Bayesian models in STAN and NIMBLE to data with missing values or Bayesian inference in commonly used models.

Pre-requisites:
   - An undergraduate/graduate introduction to probability;
   - Knowledge of R;
   - An introduction to Bayesian statistics and methods.
      · Install R and RStudio on your computer. You can find installation instructions here. Please contact us (cdsi.science [at] mcgill.ca) if you are having trouble with installation.
      · You need to bring your own laptop for this workshop. Contact us if you would like to attend but it's impossible for you to bring a laptop.


Location: HYBRID. Online via Zoom, or in-person at Burnside Hall room 1104 (11th floor).
Instructor: Prof. Russell Steele, Dept. of Mathematics and Statistics, McGill.

Registration: Register Here

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