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FIT5201 Machine learning

Chief Examiner

This field records the Chief Examiner for unit approval purposes. It does not publish, and can only be edited by Faculty Office staff

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Teresa Wang

NB: This view restricted to entries modified on or after 19990401000000

Unit Code, Name, Abbreviation

FIT5201 Machine learning (30 Sep 2019, 2:25pm) [MACHINE LEARNING (03 Oct 2019, 11:10am)]

Reasons for Introduction

Reasons for Introduction (23 Feb 2015, 2:52pm)

Data Science is a rapidly expanding field in industry and many leading universities in the USA and the UK are starting data science degrees and units. Monash FIT trialed a data science unit for the undergraduate business IT course, FIT3152, in 2013, which is continuing, mostly focusing on data analysis. This Data Analysis unit is a core elective in the full Master of Data Science to start in 2016, and a core unit in the Graduate Diploma in Data Science (Monash Online) starting 2015.

Reasons for Change (06 Jul 2021, 10:19am)

23/2/2015: Amended wording in following fields for administrative clarification: Reasons For Introduction; Teaching/Mode; Assessment/Summary; Workload/Contact Hours; Location Of Offering

27/2/2015: Amended Workload Requirements following discussion with Chair of GPC to clarify the workload required for the various teaching modes.

12/05/2016: Amended the assessments and provided the rationale for having 100% in-semester assessments for the online and on-campus versions of the unit.

19/5/2016: The unit name is updated to what was agreed last year.

05/01/2017: Admin - adding RfC - update to on-campus assessment in line with University policy. Effective from Semester 1, 2017.

02/02/2018: Admin - As advised by the MDataSci Course Director in consultation with the CE, adding ETC5252 to the prerequisites will streamline take-up of the unit by BusEco students. ETC5252 is not equivalent to FIT5197 so these students also require experience with programming in R.

24/9/2019: Admin - adding 10 minutes reading time to the overall exam duration as per University requirements.

30/9/2020: Unit name changed to Machine learning, effective semester 1, 2020. With the introduction of the Master of Artificial Intelligence and changes made to the Master of Data Science, it was agreed that the name of this unit would be changed and are already reflected in the 2020 courses.

10/09/2020: Adding alternative prerequisite enrolment rule for students studying FIT5201 as an elective in S6001 Master of Financial Mathematics (MTH5530 and MTH5540). Discussed with Chief Examiner, S6001 Course Director and Deputy Dean Education (FIT). Both MTH units meet mathematical/statistical requirements, however enrolment will be offered on a case-by-case basis to those with sufficient R programming skills.

06/07/2021 Amended in-semester assessments % accordingly and keep consistency between hand book and Moodle unit preview.

Role, Relationship and Relevance of Unit (04 Feb 2015, 5:40pm)

This unit will be a core elective unit for the Master of Data Science starting 2016. It is also a core unit the online Graduate Diploma of Data Science starting 2015.

There are no existing masters units offering the same material as this unit. Although, FIT5197, Applied Data Analysis, has similar material but covers the use of algorithms rather than the theory behind them.

Objectives

Objectives (13 Jun 2016, 09:53am)

On successful completion of this unit a student 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 Feb 2015, 6:17pm)

020119

Synopsis (18 Apr 2016, 11:35am)

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.

Prescribed Reading (for new units) (18 Apr 2016, 11:28am)

Christopher Bishop (2006). Pattern Recognition and Machine Learning. Springer.

Teaching Methods

Mode (23 Feb 2015, 2:52pm)

On-campus, Monash Online

Assessment

Assessment Summary (06 Jul 2021, 10:08am)

On-campus: Examination (2 hours and 10 minutes) 50%; in-semester 50%. Assignment 1: 25% Assignment 2: 16% Quiz: 9% Examination (2 hours and 10 minutes): 50%

Monash Online units cannot have exams, so there is a 100% in-semester assessment.

Workloads

Workload Requirements (27 Feb 2015, 11:08am)

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. Contact hours for Monash Online students:
    • Two hours/week online group sessions.
    • Online students generally do not attend lecture, tutorial and laboratory sessions, however should plan to spend equivalent time working through resources and participating in discussions.
  3. Additional requirements:
    • A minimum of 8 hours per week of personal study (22 hours per week for Monash online students) for completing lab/tutorial activities, assignments, private study and revision, and for online students, participating in discussions.

Resource Requirements

Teaching Responsibility (Callista Entry) (04 Feb 2015, 6:21pm)

FIT

Prerequisites

Prerequisite Units (10 Sep 2020, 4:38pm)

FIT5197 or (MTH5530 and MTH5540) or (ETC5252 plus experience with programming in R)

Proposed year of Introduction (for new units) (04 Feb 2015, 6:22pm)

2016

Location of Offering (23 Feb 2015, 2:54pm)

Caulfield

Faculty Information

Proposer

Wray Buntine

Approvals

School: 23 Jul 2021 (Monica Fairley)
Faculty Education Committee: 23 Jul 2021 (Monica Fairley)
Faculty Board: 23 Jul 2021 (Monica Fairley)
ADT:
Faculty Manager:
Dean's Advisory Council:
Other:

Version History

04 Feb 2015 Wray Buntine Initial Draft; modified UnitName; modified Abbreviation; modified ReasonsForIntroduction/RIntro; modified ReasonsForIntroduction/RoleRelationshipRelevance; modified UnitObjectives/ObjText; modified UnitObjectives/ObjCognitive; modified UnitObjectives/ObjAffective; modified UnitObjectives/ObjSocial; modified UnitObjectives/ObjPsychomotor; modified UnitObjectives/Objectives; modified UnitObjectives/Objectives; modified UnitContent/ASCED; modified UnitContent/Synopsis; modified Teaching/Mode; modified Assessment/Summary; modified Workload/ContactHours; modified ResourceReqs/SchoolReqs; modified Prerequisites/PreReqUnits; modified DateOfIntroduction; modified LocationOfOffering; modified FacultyInformation/FIContact; modified UnitContent/PrescribedReading
05 Feb 2015 Wray Buntine modified Workload/ContactHours
05 Feb 2015 Wray Buntine
06 Feb 2015 Wray Buntine modified Workload/ContactHours
06 Feb 2015 Wray Buntine modified Workload/ContactHours
12 Feb 2015 Jeanette Niehus Admin: modified Teaching/Mode to indicate part of online Pearson GradDip
19 Feb 2015 Wray Buntine modified Assessment/Summary; modified Workload/ContactHours; modified LocationOfOffering
23 Feb 2015 Trudi Robinson Amended wording in following fields for administrative clarification: Reasons For Introduction; Teaching/Mode; Assessment/Summary; Workload/Contact Hours; Location Of Offering
27 Feb 2015 Jeanette Niehus Admin: clarify workload - modified ReasonsForIntroduction/RChange; modified Workload/ContactHours
27 Feb 2015 Jeanette Niehus FIT5201 Chief Examiner Approval, ( proxy school approval )
27 Feb 2015 Jeanette Niehus FEC Approval
27 Feb 2015 Jeanette Niehus FacultyBoard Approval - FEC Executive Approval given 27/2/2015
17 Sep 2015 Jeanette Niehus FacultyBoard Approval - FEC approved 10/9/2015
02 Jun 2016 Reza Haffari
13 Jun 2016 Jeanette Niehus Admin: modified UnitObjectives/Objectives; modified Assessment/Summary - numbered learning outcomes (objectives) and reworded assessment as per discussion with GPC Chair.
13 Jun 2016 Jeanette Niehus FIT5201 Chief Examiner Approval, ( proxy school approval )
13 Jun 2016 Jeanette Niehus FEC Approval
13 Jun 2016 Jeanette Niehus FacultyBoard Approval - Executively approved 10/06/16
12 Dec 2016 Reza Haffari modified Assessment/Summary
05 Jan 2017 Jeanette Niehus Admin: modified ReasonsForIntroduction/RChange; modified Assessment/Summary; modified ReasonsForIntroduction/RChange
05 Jan 2017 Jeanette Niehus FIT5201 Chief Examiner Approval, ( proxy school approval )
05 Jan 2017 Jeanette Niehus FEC Approval
05 Jan 2017 Jeanette Niehus FacultyBoard Approval - Executively approved by ADE 05/01/2017.
20 Jan 2017 Jeanette Niehus Admin: modified Chief Examiner
02 Feb 2018 Jeanette Niehus Admin: modified ReasonsForIntroduction/RChange; modified Prerequisites/PreReqUnits
05 Feb 2018 Jeanette Niehus FIT5201 Chief Examiner Approval, ( proxy school approval )
05 Feb 2018 Jeanette Niehus FEC Approval
05 Feb 2018 Jeanette Niehus FacultyBoard Approval - Executively approved by the ADLT 2/2/2018
24 Sep 2019 Emma Nash modified ReasonsForIntroduction/RChange; modified Assessment/Summary
30 Sep 2019 Emma Nash modified UnitName; modified ReasonsForIntroduction/RChange
30 Sep 2019 Emma Nash FIT5201 Chief Examiner Approval, ( proxy school approval )
30 Sep 2019 Emma Nash FEC Approval
30 Sep 2019 Emma Nash FacultyBoard Approval - Approved FEC 2/19 (item 5.2) with the introduction of C6007 Master of artificial intelligence.
03 Oct 2019 Emma Nash modified Abbreviation
13 Jan 2020 Emma Nash ; modified Chief Examiner; modified FacultyInformation/FIContact
10 Sep 2020 Emma Nash modified ReasonsForIntroduction/RChange; modified Prerequisites/PreReqUnits
26 Oct 2020 Emma Nash FIT5201 Chief Examiner Approval, ( proxy school approval )
26 Oct 2020 Emma Nash FEC Approval
26 Oct 2020 Emma Nash FacultyBoard Approval - Approved at GPC meeting 5/20.
22 Jul 2021 Bruce Chen
22 Jul 2021 Bruce Chen
23 Jul 2021 Monica Fairley FIT5201 Chief Examiner Approval, ( proxy school approval )
23 Jul 2021 Monica Fairley FEC Approval
23 Jul 2021 Monica Fairley FacultyBoard Approval - executively approved DDE 23/7/21

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