Module ICE-4702:
Machine Learning
Machine Learning 2024-25
ICE-4702
2024-25
School of Computer Science & Engineering
Module - Semester 1
20 credits
Module Organiser:
Franck Vidal
Overview
Indicative content includes:
- Basics of machine learning: Concepts of object, class, feature. Training and testing protocols. Error estimation. ROC curves. Supervised and unsupervised learning.
- Classification methods: basic classifiers and classifier ensembles.
- Feature selection.
- Clustering.
- Neural networks: standard architectures and deep learning.
Assessment Strategy
-threshold -Equivalent to 50%. Uses key areas of theory or knowledge to meet the Learning Outcomes of the module. Is able to formulate an appropriate solution to accurately solve tasks and questions. Can identify individual aspects, but lacks an awareness of links between them and the wider contexts. Outputs can be understood, but lack structure and/or coherence. -good -Equivalent to the range 60%-69%.Is able to analyse a task or problem to decide which aspects of theory and knowledge to apply. Solutions are of a workable quality, demonstrating understanding of underlying principles. Major themes can be linked appropriately but may not be able to extend this to individual aspects. Outputs are readily understood, with an appropriate structure but may lack sophistication. -excellent -Equivalent to the range 70%+. Assemble critically evaluated, relevant areas of knowledge and theory to construct professional-level solutions to tasks and questions presented. Is able to cross-link themes and aspects to draw considered conclusions. Presents outputs in a cohesive, accurate, and efficient manner.
Learning Outcomes
- Detail and apply clustering algorithms to data sets.
- Evaluate classifier models and their operation using appropriate metrics and measures.
- Explain and apply the basic notions and principles of machine learning.
- Summarise neural network models and their training procedures.
- Understand feature selection methods.
Assessment method
Exam (Centrally Scheduled)
Assessment type
Summative
Description
2-hour exam of type "Choose any 2 of 4", consisting of problems to solve by hand. The problems will be similar to those in the labs and assignments. All notes, books, and internet resources are permitted.
Weighting
60%
Due date
07/01/2023
Assessment method
Coursework
Assessment type
Summative
Description
A collection of small problems based on the second half of the module. Hand-crafted solutions and short Python code solutions are expected.
Weighting
20%
Due date
16/12/2022
Assessment method
Coursework
Assessment type
Summative
Description
A collection of small problems based on the first half of the module. Hand-crafted solutions and short Python code solutions are expected.
Weighting
20%
Due date
15/11/2022