Home | About Us | Courses | Units | Student resources | Research |
IT Support | Staff directory | A-Z index |
M O N A T A R |
InfoTech Unit Avatar |
This field records the Chief Examiner for unit approval purposes. It does not publish, and can only be edited by Faculty Office staff
To update the published Chief Examiner, you will need to update the Faculty Information/Contact Person field below.
NB: This view restricted to entries modified on or after 19990401000000
This unit is a duplicate unit of FIT5201. The ITIxxxx units have been created for the Monash Indonesia offering of the Master of Data Science due to the different teaching mode.
On successful completion of this unit, you should be able to:
020119
This unit introduces machine learning and the major kinds of statistical learning models and algorithms used in data analysis. Learning and the different kinds of learning will be covered and their usage will be discussed. The unit presents foundational concepts in machine learning and statistical learning theory, e.g., bias-variance, model selection, and how model complexity interplays with model's performance on unobserved data. A series of different models and algorithms will be presented and interpreted based on the foundational concepts: linear models for regression and classification (e.g. linear basis function models, logistic regression, Bayesian classifiers, generalised linear models), discriminative and generative models, k-means and latent variable models (e.g. Gaussian mixture model), expectation-maximisation, neural networks and deep learning, and principles in scaling typical supervised and unsupervised learning algorithms to big data using distributed computing.
Minimum total expected workload equals 144 hours per semester comprising:
FIT5201
Indonesia
04 Sep 2020 | Jeanette Niehus | Admin: New unit for Indonesia, this is a copy of FIT5201 content. |
This version:
Copyright © 2022 Monash University ABN 12 377 614 012 – Caution – CRICOS Provider Number: 00008C Last updated: 20 January 2020 – Maintained by eSolutions Service desk – Privacy – Accessibility information |