Course

Statistical Learning (STA530)

Introduction to statistical learning, multiple linear regression, classification, resampling methods, model selection, regularization, non-linearity, tree-based methods, survival analysis, cluster analysis, multivariate methods. Apply the methods in R.


Dette er emnebeskrivelsen for studieåret 2025-2026. Merk at det kan komme endringer.

Fakta

Emnekode

STA530

Vekting (stp)

10

Semester undervisningsstart

Autumn

Undervisningsspråk

English

Antall semestre

1

Vurderingssemester

Autumn

Content

NB! This is an elective course and may be cancelled if fewer than 10 students are enrolled by August 20th for the autumn semester.

Statistical learning, multiple linear regression, classification, resampling methods, model selection, regularization, non-linearity, tree-based methods, survival analysis, cluster analysis, multivariable methods. Apply the methods in R.

Learning outcome

1. Knowledge. The student has knowledge about the most popular statistical models and methods that are used for inference and prediction in science and technology, with emphasis on regression and classification models and generalisations of these.

2. Skills. The student knows, based on an existing data set, how to choose a suitable statistical model, apply sound statistical methods, and perform the analyses using the statistical software R. The student knows how to present the results from the statistical analyses, and which conclusions can be drawn from the analyses.

Forkunnskapskrav

Ingen

Anbefalte forkunnskaper

A basic course in probability and statistics equivalent to STA100 Probability and statistics 1. Basic university level mathematical analysis and linear algebra corresponding to MAT100 and MAT200. Experience with use of software, preferably R. At least one higher level course in statistics like for instance STA500 or STA510 is preferable but not an absolute requirement for taking the course.

Exam

Form of assessment Weight Duration Marks Aid
Portfolio with two hand inns 1/5 Letter grades
Written exam 4/5 4 Hours Letter grades


Project work and written exam, assessed with letter grades.

The course has two assessment parts. 1) Project work that will count 20 % of the overall grade, 2) A written final exam that will count 80 % of the overall grade. Both the project work and the exam must be passed in order to obtain an overall grade in the course. Candidates that do not pass the project work, cannot resubmit until the next time the course is lectured.The project work consists of two parts that are equally weighted. The final grade of the project work is given when all parts have been submitted and the project work as a whole is graded.

There is no resit exam in the portofolio/project work.

Written exam is with pen and paper

Fagperson(er)

Course coordinator:

Bjørn Henrik Auestad

Course coordinator:

Jan Terje Kvaløy

Course coordinator:

Tore Selland Kleppe

Course teacher:

Kaouther Hadji

Method of work

Lectures, exercises/datalab, project work.

Åpent for

Admission to Single Courses at the Faculty of Science and Technology
Data Science - Master of Science Degree Programme Computational Engineering - Master of Science Degree Programme Computer Engineering - Master of Science Degree Programme, Five Years Computer Science - Master of Science Degree Programme Computer Science - Master of Science Degree Programme, Part-Time Environmental Engineering - Master of Science Degree Programme Industrial Economics - Master of Science Degree Programme Industrial Economics - Master of Science Degree Programme, Five Year Structural and Mechanical Engineering - Master of Science Degree Programme Structural and Mechanical Engineering - Master of Science Degree Programme. Five Years Industrial Automation and Signal Processing - Master of Science Degree Programme, Five Years Mathematics and Physics - Master of Science Degree Programme Mathematics and Physics - Five Year Integrated Master's Degree Programme Offshore Field Development Technology - Master of Science Degree Programme Industrial Asset Management - Master of Science Degree Programme Marine and Subsea Technology, Master of Science Degree Programme, Five Years Marine and Offshore Technology - Master of Science Degree Programme Petroleum Geosciences Engineering - Master of Science Degree Programme Petroleum Engineering - Master of Science Degree Programme Petroleum Engineering - Master of Science Degree Programme, Five Years Risk Analysis - Master of Science Degree Programme Cybernetics and Applied AI - Master of Science Degree Programme Master's Degree Programme in Societal Safety, Specialisation in Technical Social Safety Risk Management - Master's Degree Programme (Master i teknologi/siviling.)

Emneevaluering

There must be an early dialogue between the course supervisor, the student union representative and the students. The purpose is feedback from the students for changes and adjustments in the course for the current semester.In addition, a digital course evaluation must be carried out at least every three years. Its purpose is to gather the students experiences with the course.
The course description is retrieved from FS (Felles studentsystem). Version 1