Brief introduction on regression
- notation
- assumptions
- family/link functions
- relaxing assumptions (mixed models, non linearity, ...)
Marginal effect + demonstration and/or
- regression with categorical covariate (ie, like t test)
- regression with continuous covariate
- regression with continuous covariate + flexible modelling (spline)
- different family (eg, logistic regression)
At each step:
- Assumptions
- Parameters
- Visualization
Brief intro to issue of missingness
- brief introduction : why missing + why and when deal with missingness
- type of missingness
- intro to 2-3 type of way to deal with missing + pro/cons
multiple imputation + demo
- idea behind MI
- MI pitfalls
- hands on practice
Brief introduction on regression
Marginal effect + demonstration and/or
At each step:
Brief intro to issue of missingness
multiple imputation + demo