ONLINE COURSE – Introduction to generalised linear models using R and
Rstudio (IGLM01) This course will be delivered live

https://www.psstatistics.com/course/introduction-to-generalised-linear-models-using-r-and-rstudio-iglm01/

23 July 2020 - 24 July

TIME ZONE – Western European Time +1 – however all sessions will be
recorded and made available allowing attendees from different time
zones to follow a day behind with an additional 1/2 days support after
the official course finish date (please email
oliverhoo...@psstatistics.com for full details or to discuss how we
can accommodate you).

Course Overview:

In this two day course, we provide a comprehensive practical and
theoretical introduction to generalized linear models using R.
Generalized linear models are generalizations of linear regression
models for situations where the outcome variable is, for example, a
binary, or ordinal, or count variable, etc. The specific models we
cover include binary, binomial, ordinal, and categorical logistic
regression, Poisson and negative binomial regression for count
variables. We will also cover zero-inflated Poisson and negative
binomial regression models. On the first day, we begin by providing a
brief overview of the normal general linear model. Understanding this
model is vital for the proper understanding of how it is generalized
in generalized linear models. Next, we introduce the widely used
binary logistic regression model, which is is a regression model for
when the outcome variable is binary. Next, we cover the ordinal
logistic regression model, specifically the cumulative logit ordinal
regression model, which is used for the ordinal outcome data. We then
cover the case of the categorical, also known as the multinomial,
logistic regression, which is for modelling outcomes variables that
are polychotomous, i.e., have more than two categorically distinct
values. On the second day, we begin by covering Poisson regression,
which is widely used for modelling outcome variables that are counts
(i.e the number of times something has happened). We then cover the
binomial logistic and negative binomial models, which are used for
similar types of problems as those for which Poisson models are used,
but make different or less restrictive assumptions. Finally, we will
cover zero inflated Poisson and negative binomial models, which are
for count data with excessive numbers of zero observations.

Email oliverhoo...@psstatistics.com with any questions

This is one module of a five module series – you do not need to attend
them all but they are designed to compliment each other. Please see
the links below

July 23rd – 24th Introduction to generalised linear models using R and Rstudio
https://www.psstatistics.com/course/introduction-to-generalised-linear-models-using-r-and-rstudio-iglm01/

August 6th – 7th Introduction to mixed models using R and Rstudio
https://www.psstatistics.com/course/introduction-to-mixed-models-using-r-and-rstudio-immr02/

August 20th – 21st Data visualization using GG plot 2 (R and R studio)
https://www.psstatistics.com/course/introduction-to-data-visualization-using-gg-plot-2-r-and-rstudio-dvgg01/

September 3rd – 4th Data wrangling using R and Rstudio
https://www.psstatistics.com/course/introduction-data-wrangling-using-r-and-rstudio-dwrs01/





-- 
Oliver Hooker PhD.
PR statistics

2020 publications;
Parallelism in eco-morphology and gene expression despite variable
evolutionary and genomic backgrounds in a Holarctic fish. PLOS
GENETICS (2020). IN PRESS

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