We've released the new Subject Search, designed to be simpler and faster than the application below.
MA5832 - Data Mining and Machine Learning
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 algorithms based on machine learning
techniques for advanced data analysis and mining. These algorithms and techniques
fall within the most common machine learning paradigms, namely, unsupervised, semi-supervised,
and supervised learning. In particular, students will learn sophisticate machine learning
methods for clustering, outlier detection, classification, feature selection, and
regression.
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.
Prerequisites: |
24CP OF POSTGRADUATE SUBJECTS INCLUDING MA5810 |
Availabilities
|
Cairns,
Study Period 85,
Internal
|
Census Date 14-Sep-2023 |
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 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 81,
External
|
Census Date 26-Jan-2023 |
Coordinator: |
Dr Carla Ewels |
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.
|
|
|
JCU Online,
Study Period 85,
External
|
Census Date 14-Sep-2023 |
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.