MIS710 - Machine Learning in Business
Unit details
Year: | 2023 unit information |
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Enrolment modes: | Trimester 1: Burwood (Melbourne), Online Trimester 2: Burwood (Melbourne), Online |
Credit point(s): | 1 |
EFTSL value: | 0.125 |
Unit Chair: | Trimester 1: Lemai Nguyen Trimester 2: Lemai Nguyen |
Prerequisite: | Nil |
Corequisite: | Nil |
Incompatible with: | Nil |
Typical study commitment: | Students will on average spend 150 hours over the trimester period undertaking the teaching, learning and assessment activities. |
Scheduled learning activities - campus: | 1 x 1.5 hour class and 1 x 1.5 hour seminar per week |
Scheduled learning activities - online: | 1 x 1.5 hour recorded class and 1 x 1.5 hour online seminar per week |
Content
Machine Learning allows computers to learn from hidden patterns in big data to quantitatively support business decisions. In this unit, we will cover a large range of methods and algorithms that learn from big data, allowing decision makers to view previously hidden patterns and relationships and build suitable models to support business decision making.
In this unit, students will be introduced to fundamental programming concepts required by business professionals to work with machine learning concepts. This unit introduces machine learning techniques using software package Python, where the emphasis will be on solving business problems using the analysis of business data.
ULO | These are the Learning Outcomes (ULO) for this unit. At the completion of this unit, successful students can: | Deakin Graduate Learning Outcomes |
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ULO1 | Analyse and frame business challenges using machine learning concepts, techniques, and the machine learning model development lifecycle. | GLO1: Discipline-specific knowledge and capabilities GLO3: Digital Literacy |
ULO2 | Select and apply appropriate machine learning techniques to solve business problems and evaluate the machine learning model performance. | GLO3: Digital Literacy GLO5: Problem solving |
ULO3 | Explain the application of machine learning and interpret the outcomes to the various stakeholders. | GLO2: Communication |
Assessment
Assessment Description | Student output | Grading and weighting (% total mark for unit) | Indicative due week |
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Assessment 1: Case study (Report) | 2000 words | 40% | Week 5 |
Assessment 2: Part A: Case study (Report) Part B: Report (Business) | Part A: 2000 words Part B: 1000 words | Total 60%: Part A: 40% Part B: 20% | Week 11 |
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: https://deakin.rl.talis.com/modules/MIS710.html 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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