JCU Australia logo

Subject Search

Try new Subject Search!

We've released the new Subject Search, designed to be simpler and faster than the application below.

MA5810 - Introduction to Data Mining

Credit points: 3
Year: 2023
Student Contribution Band: Band 1
Administered by: College of Science and Engineering

This subject will provide students with a range of widely used algorithms and techniques to automatically extract patterns from data. Students will learn a range of classic yet powerful and often applied techniques for the most common descriptive and predictive tasks in data mining, including clustering, outlier detection, and classification. The algorithms and techniques will be studied both at the conceptual as well as at the practical levels. Software packages will be adopted for hands-on data mining in real data sets.

Learning Outcomes

  • explain what data mining is about and exemplify the most common tasks and types of data mining problems;
  • describe, choose, and apply classic unsupervised data mining methods for descriptive analytics tasks, such as clustering and outlier detection;
  • describe, choose, and apply classic unsupervised and supervised techniques for dimensionality reduction;
  • describe, choose, and apply classic supervised data mining methods for pattern classification.

Subject Assessment

  • Written > Test/Quiz 1 - (30%) - Individual
  • Written > Problem task - (30%) - Individual
  • Written > Project report - (40%) - Individual.
Prerequisites: MA5820 AND MA5800

Availabilities

Cairns, Study Period 84, Internal
Census Date 20-Jul-2023
Coord/Lect: Dr Sourav Das.
Workload expectations:

The student workload for this 3 credit point subject is approximately 130 hours.

  • 26 hours tutorials
  • assessment and self-directed study
Restrictions: Enrolment in this offering is restricted.

JCU Brisbane, Trimester 2, Internal
Census Date 22-Jun-2023
Workload expectations:

The student workload for this 3 credit point subject is approximately 130 hours.

  • 26 hours tutorials
  • assessment and self-directed study

JCU Brisbane, Trimester 3, Internal
Census Date 05-Oct-2023
Workload expectations:

The student workload for this 3 credit point subject is approximately 130 hours.

  • 26 hours tutorials
  • assessment and self-directed study

JCU Online, Study Period 84, External
Census Date 20-Jul-2023
Coord/Lect: Dr Sourav Das.
Workload expectations:

The student workload for this 3 credit point subject is approximately 130 hours.

  • 65 hours was Other - Online resources including readings, screencasts, embedded quizzing
  • assessment and self-directed study
Method of Delivery: Online - JCU
Restrictions: Enrolment in this offering is restricted.

Note: 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.