MATH 7002 Advanced Statistical Methods
Credit Points 10
Legacy Code 301115
Coordinator Paul Hurley Opens in new window
Description There has been a significant trend away from simple statistical models for complex and Big Data. Advanced Statistical Methods is a technical subject that looks at computer intensive statistical techniques for modelling complex data. Students will learn about methods including Density Estimation, the Expectation-Maximisation (EM) algorithm, Bayesian, Markovian and Hidden Markov Models, enabling them to apply sophisticated statistical tools in a Data Science setting.
School Computer, Data & Math Sciences
Discipline Statistics
Student Contribution Band HECS Band 1 10cp
Level Postgraduate Coursework Level 7 subject
Pre-requisite(s) MATH 7012 AND
MATH 7016
Co-requisite(s) COMP 7006
Restrictions
Students must be enrolled in a postgraduate program.
Learning Outcomes
On successful completion of this subject, students should be able to:
- Describe the axioms of probability and the principle of maximum likelihood.
- Use density estimation to model continuous data.
- Apply the EM algorithm (Expectation-Maximisation Algorithm) to maximise complex likelihood functions.
- Evaluate models using computational techniques
- Analyse data using Bayesian statistical models and MCMC (Markov-Chain Monte Carlo)
Subject Content
1. Review of Probability Theory and Likelihood
2. Density Estimation
3. Maximum Likelihood and EM algorithm
4. Jack-knife, Bootstrap and Cross-validation
5. Introduction to Bayesian Methods
6. Markovian and Hidden Markov Models
Assessment
The following table summarises the standard assessment tasks for this subject. Please note this is a guide only. Assessment tasks are regularly updated, where there is a difference your Learning Guide takes precedence.
Type | Length | Percent | Threshold | Individual/Group Task |
---|---|---|---|---|
Quiz | 5 x 30 minutes | 20 | N | Individual |
Case Study | 2,000 words | 40 | N | Individual |
Applied Project | 2,000 words | 40 | N | Individual |
Teaching Periods
Spring (2022)
Parramatta - Victoria Rd
Day
Subject Contact Paul Hurley Opens in new window
View timetable Opens in new window
Spring (2023)
Parramatta - Victoria Rd
On-site
Subject Contact Paul Hurley Opens in new window