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SIT720 - Machine Learning

Year:

2021 unit information

Important Update:

Unit delivery will continue to be provided in line with the most current COVIDSafe health guidelines. This may include a mix of on-campus and online activities. To find out how you are impacted, please check your unit sites for announcements and updates. Unit sites open one week prior to the start of each Trimester/Semester.

Thank you for your flexibility and commitment to studying with Deakin in 2021.

Last updated: 4 June 2021

Enrolment modes:Trimester 2: Burwood (Melbourne), Waurn Ponds (Geelong), Online
Credit point(s):1
EFTSL value:0.125
Unit Chair:Trimester 2: Chandan Karmakar
Prerequisite:

SIT718 or SIT771

For students enrolled in S536, S536J, S577, S577J, S737: Nil
Corequisite:

Nil

Incompatible with:

Nil

Typical study commitment:

Students will on average spend 150 hours over the teaching period undertaking the teaching, learning and assessment activities for this unit.

Scheduled learning activities - campus:

1 x 1 hour class per week, 1 x 1 hour workshop per week.

Scheduled learning activities - cloud:

1 x 1 hour of scheduled online seminar per week.

Content

Machine learning is an important tool in analytics, where algorithms iteratively learn from data to uncover hidden insights, without being directly programmed on where to find such information. SIT720 will allow students to explore machine-learning techniques such as data representation, unsupervised learning (clustering and factor analysis) methods, supervised learning (linear and non-linear classification) methods, concepts of suitable model complexity for the problem and data at hand. Students will have the opportunity to apply these techniques in solving real-world problem scenarios presented to them in the unit.

ULO These are the Learning Outcomes (ULO) for this unit. At the completion of this unit, successful students can: Deakin Graduate Learning Outcomes
ULO1

Use Python for writing appropriate codes to solve a given problem.

GLO1: Discipline-specific knowledge and capabilities
GLO2: Communication
GLO3: Digital literacy

ULO2

Apply suitable clustering/dimensionality reduction techniques to perform unsupervised learning on unlabelled data in a real-world scenario.

GLO1: Discipline-specific knowledge and capabilities
GLO3: Digital literacy
GLO4: Critical thinking
GLO5: Problem solving

ULO3

Apply linear and logistic regression/classification and use model appraisal techniques to evaluate develop models.

GLO1: Discipline-specific knowledge and capabilities
GLO4: Critical thinking
GLO5: Problem solving 

 

ULO4

Use the concept of KNN (k-nearest neighbourhood) and SVM (support vector machine) to analyse and develop classification models for solving real-world problems.

GLO1: Discipline-specific knowledge and capabilities
GLO4: Critical thinking
GLO5: Problem solving

ULO5

Apply decision tree and random forest models to demonstrate multi-class classification models.

GLO1: Discipline-specific knowledge and capabilities
GLO4: Critical thinking
GLO5: Problem solving

ULO6

Implement model selection and compute relevant evaluation measure for a given problem. 

GLO1: Discipline-specific knowledge and capabilities
GLO2: Communication
GLO4: Critical thinking

ULO7

Use concepts of machine learning algorithms to design solution and compare multiple solutions.

GLO1: Discipline-specific knowledge and capabilities
GLO2: Communication
GLO5: Problem solving
GLO6: Self-management

These Unit Learning Outcomes are applicable for all teaching periods throughout the year

Assessment

Assessment Description Student output Weighting (% total mark for unit) Indicative due week
Quizzes 

Two online quizzes; approximately 20 questions each within 45 minutes

20% (2 x 10%) Weeks 5 and 10
Problem-solving tasks  Written program and report on the output. 20% (5%, 15%) Weeks 3 and 7
Project Written report, approximately 2,000 words 25% Week 11
Examination 2-hour written examination 35% Examination period

The assessment due weeks provided may change. The Unit Chair will clarify the exact assessment requirements, including the due date, at the start of the teaching period.

Learning Resource

The texts and reading list for the unit can be found on the University Library via the link below: SIT720 Note: Select the relevant trimester reading list. Please note that a future teaching period's reading list may not be available until a month prior to the start of that teaching period so you may wish to use the relevant trimester's prior year reading list as a guide only.

Unit Fee Information

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