University Course Planner The University of Adelaide Australia

COMP SCI 3314 - Statistical Machine Learning

Career: Undergraduate
Units: 3
Term: Semester 2
Campus: North Terrace
Contact: Up to 2 hours per week.
Available for Study Abroad and Exchange: Yes
Available for Non-Award Study: No
Pre-Requisite: COMP SCI 2201 or COMP SCI 2009
Assumed Knowledge: Basic probability theory and linear algebra as taught in MATHS 1004 or MATHS 1012
Incompatible: COMP SCI 4401, COMP SCI 4801
Assessment: Written exam and/or assignments
Syllabus:

Statistical Machine Learning is concerned with algorithms that automatically improve their performance through 'learning'. For example, computer programs that learn to detect humans in images/video; predict stock markets, and rank web pages. Statistical machine learning has emerged mainly from computer science and artificial intelligence, and has connections to a variety of related subjects including statistics, applied mathematics and pattern analysis. Applications include image and audio signal analysis, data mining, bioinformatics and exploratory data analysis in natural science and engineering. This is an introductory course on statistical machine learning which presents an overview of many fundamental concepts, popular techniques, and algorithms in statistical machine learning. It covers basic topics such as dimensionality reduction, linear classification and regression as well as more recent topics such as ensemble learning/boosting, support vector machines, kernel methods and manifold learning. This course will provide the students the basic ideas and intuition behind modern statistical machine learning methods. After studying this course, students will understand how, why, and when machine learning works on practical problems.

Course Fees

To display course fees, please select your status and program below:

Student Status

Domestic
International

What type of place are you studying in

Commonwealth supported
Full fee paying

Study Level

Undergraduate
Postgraduate Coursework
Non Award

Program of Study

Study Abroad student tuition fees are available here

Only some Postgraduate Coursework programs are available as Commonwealth Supported. Please check your program for specific fee information.

Units
EFTSL
Amount
3
0.125
          
  


Course Outline

A Course Outline which includes Learning Outcomes, Learning Resources, Learning & Teaching for this course may be accessed here


Critical Dates

Term Last Day to Add Online Census Date Last Day to WNF Last Day to WF
Semester 2 Mon 11/08/2025 Wed 20/08/2025 Fri 19/09/2025 Fri 31/10/2025


Class Details

Enrolment Class: Lecture
Class Nbr Section Size Available Dates Days Time Location
28470 LE01 210 35 31 Jul - 18 Sep Thursday 12pm - 2pm The Braggs, G60, Bragg Lecture Theatre
9 Oct - 30 Oct Thursday 12pm - 2pm The Braggs, G60, Bragg Lecture Theatre
Related Class: Workshop
Class Nbr Section Size Available Dates Days Time Location
28471 WR08 20 FULL 12 Aug - 12 Aug Tuesday 1pm - 2pm Engineering & Mathematics, EM105, Teaching Room
2 Sep - 2 Sep Tuesday 1pm - 2pm Engineering & Mathematics, EM105, Teaching Room
7 Oct - 7 Oct Tuesday 1pm - 2pm Engineering & Mathematics, EM105, Teaching Room
28 Oct - 28 Oct Tuesday 1pm - 2pm Engineering & Mathematics, EM105, Teaching Room
28472 WR09 20 FULL 11 Aug - 11 Aug Monday 11am - 12pm Barr Smith South, 2052, Teaching Room
1 Sep - 1 Sep Monday 11am - 12pm Barr Smith South, 2052, Teaching Room
6 Oct - 6 Oct Monday 11am - 12pm Barr Smith South, 2052, Teaching Room
27 Oct - 27 Oct Monday 11am - 12pm Barr Smith South, 2052, Teaching Room
28473 WR07 20 2 13 Aug - 13 Aug Wednesday 3pm - 4pm Schulz, 307, Teaching Room
3 Sep - 3 Sep Wednesday 3pm - 4pm Schulz, 307, Teaching Room
8 Oct - 8 Oct Wednesday 3pm - 4pm Schulz, 307, Teaching Room
29 Oct - 29 Oct Wednesday 3pm - 4pm Schulz, 307, Teaching Room
28474 WR06 20 FULL 12 Aug - 12 Aug Tuesday 2pm - 3pm Hughes, 322, Teaching Room
2 Sep - 2 Sep Tuesday 2pm - 3pm Hughes, 322, Teaching Room
7 Oct - 7 Oct Tuesday 2pm - 3pm Hughes, 322, Teaching Room
28 Oct - 28 Oct Tuesday 2pm - 3pm Hughes, 322, Teaching Room
28475 WR05 20 FULL 13 Aug - 13 Aug Wednesday 12pm - 1pm Hughes, 322, Teaching Room
3 Sep - 3 Sep Wednesday 12pm - 1pm Hughes, 322, Teaching Room
8 Oct - 8 Oct Wednesday 12pm - 1pm Hughes, 322, Teaching Room
29 Oct - 29 Oct Wednesday 12pm - 1pm Hughes, 322, Teaching Room
28476 WR04 20 FULL 12 Aug - 12 Aug Tuesday 12pm - 1pm Ingkarni Wardli, B17, Teaching Room
2 Sep - 2 Sep Tuesday 12pm - 1pm Ingkarni Wardli, B17, Teaching Room
7 Oct - 7 Oct Tuesday 12pm - 1pm Ingkarni Wardli, B17, Teaching Room
28 Oct - 28 Oct Tuesday 12pm - 1pm Ingkarni Wardli, B17, Teaching Room
28477 WR03 20 1 13 Aug - 13 Aug Wednesday 2pm - 3pm Barr Smith South, 2052, Teaching Room
3 Sep - 3 Sep Wednesday 2pm - 3pm Barr Smith South, 2052, Teaching Room
8 Oct - 8 Oct Wednesday 2pm - 3pm Barr Smith South, 2052, Teaching Room
29 Oct - 29 Oct Wednesday 2pm - 3pm Barr Smith South, 2052, Teaching Room
28478 WR02 20 2 12 Aug - 12 Aug Tuesday 11am - 12pm Ingkarni Wardli, B17, Teaching Room
2 Sep - 2 Sep Tuesday 11am - 12pm Ingkarni Wardli, B17, Teaching Room
7 Oct - 7 Oct Tuesday 11am - 12pm Ingkarni Wardli, B17, Teaching Room
28 Oct - 28 Oct Tuesday 11am - 12pm Ingkarni Wardli, B17, Teaching Room
28479 WR01 20 FULL 11 Aug - 11 Aug Monday 10am - 11am Barr Smith South, 2052, Teaching Room
1 Sep - 1 Sep Monday 10am - 11am Barr Smith South, 2052, Teaching Room
6 Oct - 6 Oct Monday 10am - 11am Barr Smith South, 2052, Teaching Room
27 Oct - 27 Oct Monday 10am - 11am Barr Smith South, 2052, Teaching Room