Detailed Programme

Detailed Programme

 

  1. Introduction to generalised linear models

    • Data types.

    • Review of linear regression model.

    • Exponential family of distributions: introduction.

    • Natural and scale parameters. Mean and variance. Variance function.

    • Introduction to Generalized Linear Models: link functions, canonical link function, linear predictor.

    • Variables, factors, interactions. Parametrisation.

    • Deviance and scaled deviance. 

    • Pearson and deviance residuals.

  2. Statistical inference in the GLM

    • Review of Maximum Likelihood theory.

    • Point and interval estimation.

    • Test of hypotheses on individual parameters.

    • Test of linear restrictions - nested models.

    • Model fit and model comparison.

    • Estimation of dispersion parameter.

  3. Continuous response models

    • The Normal model.

    • The Exponential and Gamma models.

  4. Discrete response models

    • The Binomial model.

    • The Poisson model.

    • Modelling of proportions.

    • Poisson modelling of rates. Offest.

  5. Quasi-likelihood and overdispersion

    • Introduction to quasi-likelihood estimation.

    • Likelihood equations for the general and regression models.

    • Choice of mean value and variance functions.

    • Estimation of the dispersion parameter.