JCU Logo

James Cook University Subject Handbook - 2024

For subject information from 2025 and onwards, please visit the new JCU Course and Subject Handbook website.

MA5832 - Data Mining and Machine Learning

Credit points:03
Year:2024
Student Contribution Band:Band 1
Prerequisites:24CP OF POSTGRADUATE SUBJECTS INCLUDING MA5810
Administered by:College of Science and Engineering

Subject Description

    This subject will provide students with a range of algorithms based on machine learning techniques for advanced data analysis and mining. These algorithms and techniques fall within the most common machine learning paradigms. In particular, students will learn sophisticated supervised learning methods.

Learning Outcomes

  • explain what machine learning for data mining is about and identify the most common tasks and roles of machine learning in the realm of data mining
  • describe, choose, and apply unsupervised machine learning methods for descriptive data mining tasks, such as clustering and outlier detection
  • describe, choose, and apply supervised techniques for dimensionality reduction via feature selection
  • describe, choose, and apply semi-supervised and/or supervised machine learning methods for predictive data mining tasks, such as pattern classification and regression

Subject Assessment

  • Written > Problem task - (60%) - Individual
  • Written > Project report - (40%) - Individual

Note that minor variations might occur due to the continuous subject quality improvement process, and in case of minor variation(s) in assessment details, the Subject Outline represents the latest official information.

Availabilities

Cairns Nguma-bada, Study Period 83, Internal

Census date:Thursday, 23 May 2024
Study Period Dates:Monday, 13 May 2024 to Saturday, 29 Jun 2024
Coordinator(s):
MS Maryam Ebrahimpour
Lecturer(s):
MS Maryam Ebrahimpour
DR Carla Ewels
Professor Yvette Everingham
Assoc. Professor Wayne Read
Workload expectations:The student workload for this 3 credit point subject is approximately 130 hours.
  • 26 Hours - Tutorials - A combination of lectures and tutorials.
Restrictions:Enrolment is restricted.
Enrolment Restrictions:
Courses:
  • Course 300104
  • Master of Data Science (Professional)

JCU Brisbane, Study Period 86, Internal

Census date:Thursday, 14 Nov 2024
Study Period Dates:Monday, 04 Nov 2024 to Saturday, 21 Dec 2024
Lecturer(s):
DR Paul Darwen
Workload expectations:The student workload for this 3 credit point subject is approximately 130 hours.
  • 26 Hours - Tutorials
Restrictions:Enrolment is restricted.
Enrolment Restrictions:
Courses:
  • Course 300104
  • Master of Data Science (Professional)

JCU Online, Study Period 83, External

Census date:Thursday, 23 May 2024
Study Period Dates:Monday, 13 May 2024 to Saturday, 29 Jun 2024
Coordinator(s):
MS Maryam Ebrahimpour
Lecturer(s):
MS Maryam Ebrahimpour
DR Carla Ewels
Professor Yvette Everingham
Assoc. Professor Wayne Read
Workload expectations:The student workload for this 3 credit point subject is approximately 130 hours.
  • 65 Hours - Online activity - Online resources including readings, screencasts, embedded quizzing
Method of delivery:Online - JCU
Restrictions:Enrolment is restricted.
Enrolment Restrictions:Students in KeyPath Courses