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ITI5201 Machine learning

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Unit Code, Name, Abbreviation

ITI5201 Machine learning (04 Sep 2020, 12:29pm) [Machine Learning (04 Sep 2020, 12:29pm)]

Reasons for Introduction

Reasons for Introduction (04 Sep 2020, 12:30pm)

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.

Objectives

Objectives (04 Sep 2020, 12:30pm)

On successful completion of this unit, you should be able to:

  1. describe what statistical machine learning and its theoretical concepts are.
  2. assess a typical machine learning model and algorithm.
  3. develop, and apply major models and algorithms for statistical learning.
  4. scale typical statistical learning algorithms to learn from big data.

Unit Content

ASCED Discipline Group Classification (04 Sep 2020, 12:31pm)

020119

Synopsis (04 Sep 2020, 12:32pm)

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.

Teaching Methods

Mode (04 Sep 2020, 12:32pm)

On-campus

Assessment

Assessment Summary (04 Sep 2020, 12:32pm)

Examination (2 hours and 10 minutes) 50%; in-semester 50%

Workloads

Workload Requirements (04 Sep 2020, 12:33pm)

Minimum total expected workload equals 144 hours per semester comprising:

  1. Contact hours for on-campus students:
    • Two hours/week lectures.
    • Two hours/week laboratories.
  2. Additional requirements:
    • A minimum of 8 hours per week of personal study for completing lab/tutorial activities, assignments, private study and revision, and for online students, participating in discussions.

Resource Requirements

Teaching Responsibility (Callista Entry) (04 Sep 2020, 12:34pm)

FIT

Prerequisites

Prerequisite Units (04 Sep 2020, 12:34pm)

ITI5197

Prohibitions (04 Sep 2020, 12:35pm)

FIT5201

Location of Offering (04 Sep 2020, 12:35pm)

Indonesia

Faculty Information

Proposer

Jeanette Niehus

Approvals

School:
Faculty Education Committee:
Faculty Board:
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Faculty Manager:
Dean's Advisory Council:
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Version History

04 Sep 2020 Jeanette Niehus Admin: New unit for Indonesia, this is a copy of FIT5201 content.

This version: