Short Course: Fundamentals of Regression in R
Event description
Course Overview
This course provides a comprehensive hands-on introduction to regression analysis techniques The course content is designed for researchers with some prior knowledge of basic statistical testing, such as t-tests, p-values, confidence intervals and simple linear regression. The primary focus is on developing a conceptual understanding of regression models through numerous examples. There will be a strong emphasis on practical implementation in R, and interpretation of output. Approximately half the time will be dedicated to practical hands-on sessions.
The core content starts from linear models with more than one variable, enabling research questions like "What is the effect of this treatment/intervention after adjusting for confounding variables?" or "What is the relationship between two variables while controlling for other factors?" We then cover interactions between variables in linear models, enabling research questions like: "How does the effect of the treatment depend on some other variable? Is the treatment effect different between groups?" and "How is the relationship between two variables modified by some other variable?"
Fundamental regression concepts and skills that arise in regression, like multicollinearity, multiple testing, model selection, generalizing the linear model to data that is non-normal (e.g., binary response and count data), are all covered in this course. By the end of this course, you will have a foundation in regression modelling techniques with the practical experience in R needed for more advanced regression methods like mixed models, longitudinal data analysis, survival analysis, meta-analysis, generalised additive models, multivariate analysis, ordinal and multinomial regression, spatial regression and other extensions.
Course outline
Day 1: Revision, Multiple Regression Introduction and Extensions
Day 2: Morning/Afternoon: Multiple Comparisons/Model Selection
Day 3: Morning/Afternoon: Generalized Linear Models (GLMs)/Generalized Additive Models (GAMs)
Accessibility
This is an in person course. Slides are in PDF format, exercises are in R markdown, and both will be downloadable in advance. If HTML slides and alt text are needed to assist accessibility, we will make every effort to provide these, please let us know well in advance. Please email Eve (eve.slavich@unsw.edu.au) with any questions or requests.
Prerequisites: We assume knowledge of introductory statistics, including principles of study design, the concept of a p-value, the concept of a confidence interval, one-sample and two-sample t-tests, and the equivalence of a t-test to simple linear regression and simple linear regression (with a single dependent and single independent variable). All of these are covered in our Introduction to Statistics courses.
You will need R and Rstudio installed on your computer. We also assume you have some experience with R. If you are new to R,
you should complete our one-day Introduction to R course, February 3 prior to this course. For more details and register HERE.
Also, you will be expected to watch this seminar on Study Design and Statistical Principles below ahead of the course.
Course requirements: You will need to bring and use your own computer during the workshop.
Presenter and Expertise: Eve Slavich, Statistical Consultant, UNSW Stats Central
Date: Tuesday 11 to Thursday 13 February 2025
Duration: 9.30am - 4.00pm, each day
Location: K-C27-G01- Wallace Wurth G01
You will receive a certificate of completion for the course.
We offered bundle tickets for UNSW Student ONLY with further 10% discount as follows:
-
Bundle2: $180 (full price $200)
- Introduction to R: February 3
-
Introductory Statistics for Researchers using R: February 5-7
- Bundle3: $315 (full price $350)
- Introduction to R: February 3
- Introductory Statistics for Researchers using R: February 5-7
- Fundamentals of Regression in R: February 11-13
- Bundle4: $405 (full price $450)
- Introduction to R: February 3
- Introductory Statistics for Researchers using R: February 5-7
- Fundamentals of Regression in R: February 11-13
- Plus one of the following advanced courses: You will be notified when the tickets are available!
- Mixed Models using R: May (2 days)
- Meta Analysis: May (2 days)
- Sample Size and Power Calculations: May (2 days)
- Multivariate Statistics using R: August (2 days)
- Survival: September (2 days)
Course cancellation or postponement policy:
If the course is cancelled or postponed by Stats Central, you have the option to:
- Keep the funds and enrol in the next available course when it is rescheduled (most preferred option), or
- Receive a full refund of the ticket price
Note: If you have a funding support and would like to pay by "Internal Funding Payment", please contact us stats.central@unsw.edu.au
FAQs
How can I contact the organiser with any questions?
Please send us an email at: stats.central@unsw.edu.au
Tickets for good, not greed Humanitix dedicates 100% of profits from booking fees to charity