Metadata
Title
STU33011 – Multivariate Linear Analysis
Category
courses
UUID
be6205b8448c417ebf99b7ed818de14d
Source URL
https://teaching.scss.tcd.ie/module/stu33011-multivariate-linear-analysis/
Parent URL
https://www.maths.tcd.ie/undergraduate/modules/minor-stats.php
Crawl Time
2026-03-16T07:00:46+00:00
Rendered Raw Markdown

STU33011 – Multivariate Linear Analysis

Source: https://teaching.scss.tcd.ie/module/stu33011-multivariate-linear-analysis/ Parent: https://www.maths.tcd.ie/undergraduate/modules/minor-stats.php

Module Code STU33011
Module Name Multivariate Linear Analysis (MLA)
ECTS Weighting [1] 5 ECTS
Semester Taught Semester 1
Module Coordinator/s Arthur White

Module Learning Outcomes

On successful completion of this module, students will be able to:

  1. Define and describe various classical dimension reduction techniques for multivariate data;
  2. Implement clustering and/or classification algorithms and assess and compare the results;
  3. Interpret output of data analysis performed by a computer statistics package.

Module Content

Classical multivariate techniques of principal component analysis, clustering, discriminant analysis, k-nearest neighbours, and logistic regression are investigated. There is a strong emphasis on the use and interpretation of these techniques. More modern techniques, some of which address the same issues, are covered in the SS module Data Analytics.

Teaching and Learning Methods

Lectures and labs.

Assessment Details

Assessment Component Brief Description Learning Outcomes Addressed % of Total Week Set Week Due
Examination In Person (2 hours) LO1, LO2, LO3 80% N/A N/A
Continuous Assessment Mid-Term Assignment LO1, LO2, LO3 10% Week 6 Week 8
Continuous Assessment Group project LO1, LO2, LO3 10% Week 10 Week 12

Reassessment Details

In person (2 hours).

Contact Hours and Indicative Student Workload

Contact Hours (scheduled hours per student over full module), broken down by: 33 hours
Lecture 22 hours
Laboratory 11 hours
Tutorial or seminar 0 hours
Other 0 hours
Independent Study (outside scheduled contact hours), broken down by: 83 hours
Preparation for classes and review of material (including preparation for examination, if applicable) 42 hours
Completion of assessments (including examination, if applicable) 41 hours
Total Hours 116 hours

Module Pre-requisites

Prerequisite modules: STU23501

Other/alternative non-module prerequisites:

Knowledge of linear algebra, e.g., matrix notation, eigenvalues and eigenvectors. Some familiarity with regression models, and with the R programming language, will also be helpful.

Module Co-requisites

N/A

Module Website

STU33011 Website

Blackboard