MA8701 General Statistical Methods - Spring 2019

new name of the course will be "Advanced topics in statistical learning and inference".

Course coordinator: Mette Langaas
Course team: Erlend Aune, Benjamin Dunn, Bo Lindqvist, Thiago Martins, John Tyssedal.

Goal: to give a broad introduction to principles and methods of contemporary statistics, see course description.

The main topic of the course is Statistical Learning, focussing on five specific topics.

Teaching activities are planned in calendar weeks 2-13, and presentation of project work in weeks 14+15.

A larger project will count 30% of the grade, and is to be presented in the last two weeks (week 14+15) of the course (R or Python). The project work can be done in teams. There will be a final oral exam counting 70% of the grade.

The grade for this course is pass/fail, and 70/100 score is required to pass (this is the standard rule for PhD courses at NTNU).

Prerequisites:

Helpful knowledge

Programming/IT-knowledge

In addition good programming skills in either R or Python, and it is also preferable if you have some knowledge of commands in unix and the skills to be able to run a script on a computer cluster.

Reference group