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Quantitative Research Methods - Statistical Analysis and Data Modelling (via Zoom) - 26 October (Day 3)

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Event description

Through a sequence of four learning modules, this course will enhance your skills in the analysis phase of the research lifecycle.  It begins with an introduction to the basics of statistical modelling using R, progressing to more complex concepts and models in later modules. Each module consists of interactive online tutorials plus a Zoom sessions in which the instructor facilitates discussions of the material contained in the tutorials. Students who register to participate in the Zoom session will be expected to actively participate in the discussions through group work or with the entire class.

This course is suitable for HDR students in the second or third stage of their candidature. It

supports the students’ development in the Research Knowledge and Skills element of the MAPARC research student capability framework and the Research Lifecycle element of the UTS Research Outcomes Capability framework.

Time: 9:30 AM - 11:30 AM

FacilitatorA/Prof Tapan Rai


Day Three: Monday, 26 October 2020
Working with binary outcomes: Introduction to logistic regression

The module introduces you to the use of logistic regression for modelling binary outcomes. It builds on your understanding of linear regression (which was introduced on Day 1) and the use of transformations (which were introduced on Day 2). Specifically, you will:

  • Appreciate the issues that arise in modelling binary outcomes
  • Understand the conceptual basis of logistic regression
  • Run a logistic regression model in R
  • Interpret the output of a logistic regression model, draw inferences and report them
  • Use classification plots, the Wald Test, and the Likelihood Ratio Tests to assess logistic regression models

Zoom meeting link:
https://utsmeet.zoom.us/j/96997455790


Students need to complete the LinkedIn Learning course Learning R and to install R and RStudio
on their computer prior to participating in this short course. For free access to all LinkedIn Learning Courses (including
Learning R), sign in to LinkedIn with your UTS email address.



FAQ'S

What if I can no longer attend, do I need to cancel?

Yes. Please contact the Researcher Development team at grs_rd@uts.edu.au for workshop cancellation.

If you fail to cancel your registration and are absent three or more times in a session, you will be suspended from the program for 1 year. You will be notified by email prior to your suspension being applied.

If a course is more than one day, am I required to attend all days?

We strongly recommend that you attend all days in a course in order to get the full learning experience that it has to offer. However, if you need to miss one of the days, please go through the material for that day on UTS Online before participating in the subsequent Zoom sessions for that course.

Also, If you are unable to attend one of the days, please contact us at grs_rd@uts.edu.au prior to the session, so that we can plan the best experience for the other students in the course.

Who should I contact if I have any further questions?

Please contact the Researcher Development team at grs_rd@uts.edu.au. Please note you must use your UTS student email address for official university correspondence


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