10th Annual Summer Institute in Statistics and Modeling in Infectious Diseases (SISMID)


This module is currently full. Registrations are closed at this time.

Module 7: Simulation-based Inference for Epidemiological Dynamics

Mon, July 16 to Wed, July 18
Instructor(s):

Module dates/times: Monday, July 16; 8:30 a.m. -5 p.m.; Tuesday, July 17, 8:30 a.m.-5 p.m., and Wednesday, July 18, 8:30 a.m.-Noon

This course is full. If you wish to be placed on the waiting list, email uwbiost@uw.edu.

Prerequisites: Students are expected to have a working knowledge of the R computing environment. Programming will be in R. Students new to R should complete a tutorial before the module. This module assumes knowledge of the material in Module 1: Probability and Statistical Inference, though not necessarily from taking that module.

This module introduces statistical inference techniques and computational methods for dynamic models of epidemiological systems. The course will explore deterministic and stochastic formulations of epidemiological dynamics and develop inference methods appropriate for a range of models. Special emphasis will be on exact and approximate likelihood as the key elements in parameter estimation, hypothesis testing, and model selection. Specifically, the course will cover sequential Monte Carlo, iterated filtering, and model criticism techniques. Students will learn to implement these in R to carry out maximum likelihood and Bayesian inference.