Overview

This course provides an in-depth study of statistical machine learning approaches. The focus will be on methods for learning and inference in structured probabilistic models, with a healthy balance of theory and practice. It is aimed at postgraduate students and advanced undergraduates who are willing to go beyond basic understanding … For more content click the Read More button below. The course provides fundamental support for those willing to intensify their knowledge in the area of big data analytics. It will cover topics on exact and approximate inference in probabilistic graphical models, learning in structured latent variable models, and posterior inference in non-parametric models based on Gaussian processes. 

Conditions for Enrolment

Prerequisite: COMP9417.

Delivery

In-person - Standard (usually weekly or fortnightly)

Course Outline

To access course outline please visit below link (Please note that access to UNSW Canberra course outlines requires VPN):

Fees

Pre-2019 Handbook Editions

Access past handbook editions (2018 and prior)