Hi, you are logged in as , if you are not , please click here
You are shopping as , if this is not your email, please click here

Bayesian Statistics Online Short Course, November 2024

Info
Location
Attendee Categories
Contact
More Info

Event Information

Bayesian Statistics Online Short Course, November 2024
Dates of Event
15th November 2024 – 29th November 2024
Last Booking Date for this Event
29th November 2024

Description

Course aims
This short course introduces students to Bayesian statistical methods in biomedical settings, and provides skills for designing, assessing and interpreting Bayesian analyses using the R and JAGS statistical software. The emphasis throughout will be on practical, applied modelling: code to carry out analyses will be provided.


Course outline
The course runs on the Moodle online learning platform, and involves 7 sessions:
1.    Quantifying uncertainty with probability
2.    Bayesian inference
3.    Bayesian regression models
4.    Critiquing and comparing Bayesian models
5.    Hierarchical models
6.    Modelling with missing and censored data
7.    Integrating multiple sources of data


Course delivery
The course will be delivered via the Moodle online learning platform. The course consists of 7 half-days worth of content, and will take place over 7 half-days across 3 weeks starting on Friday 15th November 2024.
It will consist of some on-demand content and some timetabled (live) sessions.


University of Cambridge Students and Staff, whose department will be covering the participation cost, please raise a Purchase Order (or contact a member of your department who can assist with this) and send a PDF of the Purchase Order to [email protected] .  You will then be sent the passcode which you will need to use along with the Purchase Order number to complete registration below, selecting the 'UoC Student/Staff Registration' option. 

Attendee CategoryCost   
1. External Student and/or LMIC Participant Registration£200.00

How would you rate your experience today?

How can we contact you?

What could we do better?

   Change Code