MonMap
A course mapper by Monash Association of Coding (MAC)
Advanced data analysis
FIT3154
Synopsis
This unit introduces the problem of machine learning and the major kinds of statistical learning used in data analysis. Learning and the different kinds of learning will be covered and their usage discussed. Evaluation techniques and typical application contexts will presented. A series of different models and algorithms will be presented in an exploratory way: looking at typical data, the basic models and algorithms and their use: linear and logistic regression, support vector machines, Bayesian networks, decision trees, random forests, k-means and clustering, neural-networks, deep learning, and others. Finally, two specialist topics will be covered briefly, statistical learning theory and working with big data.
Sourced from the Monash Handbook 2026.
Quick facts
- Credit points
- 6
- Level
- 3
- Audience
- Undergraduate
- Type
- Coursework
- School
- Faculty of Information Technology
- Handbook year
- 2026
Prerequisites (1)
- Modelling for data analysisFIT2086
What it unlocks (4)
Offerings (2)
- Second semesterMalaysia · ON-CAMPUS / Clayton · FLEXIBLE
Listed in 4 areas of study
- Computational scienceComputer science electives
- Computational scienceComputer science electives
- Data scienceLevel 3 elective units
- Software engineeringSoftware engineering technical electives