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Survival Models

November 25 at 11:00 am - 12:00 pm

Free

This workshop will introduce regression methods for time-to-event data, such as Cox proportional hazards. We will discuss assumptions and limitations, and how to model simple time-to-event data in R. By the end of the session, participants should be able to interpret survival curves, explain hazard ratios in regression terms, and determine if or when survival models are the right tool for analyzing such data.

Fitting Models to Data, Not Data to Models Series

You might have heard someone say, “all models are wrong, but some are useful.” The best way to ensure models are useful is to choose a model that is appropriate to your data and research questions, rather than forcing your data to fit your model’s assumptions (e.g., normality, independence, constant variance).

This series introduces early-career researchers to statistical models that extend beyond linear models (i.e., ANOVAs) so that they may learn how to fit models to their data rather than fitting their data to models. All workshops will use R and RStudio, so some experience with R or other programming languages is encouraged but not required. See the R Fundamentals for Data Analysis for an introduction to R and RStudio. Attendees who do not have experience with R are encouraged to review this content or take the introductory workshop concurrently if it’s being offered.

REGISTER FOR INDIVIDUAL WORKSHOP

REGISTER FOR ALL WORKSHOPS IN THE SERIES

For a complete list of upcoming CSC Workshops, please visit our workshops page.

This workshop qualifies for the Scholarly Research, Writing, and Publishing Credential offered through the College of Graduate Studies.

Questions? Contact the Centre for Scholarly Communication at csc.ok@ubc.ca.

Details

Date:
November 25
Time:
11:00 am - 12:00 pm
Cost:
Free

Venue

3287 University Way
Kelowna, BC V1V 1V7 Canada
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Additional Info

Room Number
111
Registration/RSVP Required
Yes (see event description)
Event Type
Workshop/Course
Topic
Research and Innovation, Student Learning
Audiences
Faculty, Staff, Students, Postdoctoral Fellows and Research Associates