CE802-7-SP-CO:
Machine Learning

The details
2022/23
Computer Science and Electronic Engineering (School of)
Colchester Campus
Spring
Postgraduate: Level 7
Current
Monday 16 January 2023
Friday 24 March 2023
15
17 June 2022

 

Requisites for this module
(none)
(none)
(none)
(none)

 

(none)

Key module for

MSC G411JS Artificial Intelligence,
MSC G30424 Data Science,
MSC G412JS Artificial Intelligence and its Applications,
MSC G30612 Data Science and its Applications,
MSC G30624 Data Science and its Applications,
MSC G306JS Data Science and its Applications

Module description

The module assumes a reasonable programming background and is not suitable for students without prior programming experience.

This module provides an understanding of machine learning, the methods involved in evaluating them, and their application to real-world problems. It will include classification and regression learning along with other techniques, and apply the techniques to particular classes of problems.

Module aims

The aim of this module is to provide an understanding of the major approaches to machine learning, the methods involved in evaluating them, and their application to the solution of real problems.

Module learning outcomes

On completion of the course, students should be able to:

1. demonstrate an understanding of the major approaches to classification and regression learning

2. demonstrate an understanding of other machine learning techniques that have important practical applications

3. identify machine learning techniques appropriate for particular classes of problem and apply them to practical problems

4. undertake a comparative evaluation of several machine learning procedures

Module information

The module assumes a reasonable programming background and is not suitable for students without prior programming experience.

Syllabus

Introduction:
What is meant by machine learning
Taxonomy of machine learning algorithms
The inductive bias
Data mining

Learning to classify:
Decision tree induction
Naïve Bayes methods
Bayesian networks
K-nearest neighbour method
Support vector machines

Learning to predict numeric values:
Linear Regression
Regression trees

Evaluating learning procedures

Overfitting and the 'bias-variance trade-off'

Applications of machine learning

Clustering:
k-means algorithm
agglomerative hierarchical methods

Association rules mining:
A priori algorithm

Reinforcement learning:
Q learning

Multiple learners:
Bagging, boosting, forests and stacking

Learning and teaching methods

Lectures, Labs and Classes.

Bibliography

This module does not appear to have a published bibliography for this year.

Assessment items, weightings and deadlines

Coursework / exam Description Deadline Coursework weighting
Coursework   Progress test 1     25% 
Coursework   Progress Test 2    25% 
Coursework   Assignment 1 - Report on Practical Exercise    50% 

Exam format definitions

  • Remote, open book: Your exam will take place remotely via an online learning platform. You may refer to any physical or electronic materials during the exam.
  • In-person, open book: Your exam will take place on campus under invigilation. You may refer to any physical materials such as paper study notes or a textbook during the exam. Electronic devices may not be used in the exam.
  • In-person, open book (restricted): The exam will take place on campus under invigilation. You may refer only to specific physical materials such as a named textbook during the exam. Permitted materials will be specified by your department. Electronic devices may not be used in the exam.
  • In-person, closed book: The exam will take place on campus under invigilation. You may not refer to any physical materials or electronic devices during the exam. There may be times when a paper dictionary, for example, may be permitted in an otherwise closed book exam. Any exceptions will be specified by your department.

Your department will provide further guidance before your exams.

Overall assessment

Coursework Exam
100% 0%

Reassessment

Coursework Exam
100% 0%
Module supervisor and teaching staff
Prof Luca Citi, email: lciti@essex.ac.uk.
Professor Luca Citi
School Office, email: csee-schooloffice (non-Essex users should add @essex.ac.uk to create full e-mail address), Telephone 01206 872770

 

Availability
No
No
No

External examiner

Dr Colin Johnson
University of Nottingham
Dr MARJORY CRISTIANY Da COSTA ABREU
Sheffield Hallam University
Senior Lecturer
Resources
Available via Moodle
Of 42 hours, 32 (76.2%) hours available to students:
8 hours not recorded due to service coverage or fault;
2 hours not recorded due to opt-out by lecturer(s), module, or event type.

 

Further information

Disclaimer: The University makes every effort to ensure that this information on its Module Directory is accurate and up-to-date. Exceptionally it can be necessary to make changes, for example to programmes, modules, facilities or fees. Examples of such reasons might include a change of law or regulatory requirements, industrial action, lack of demand, departure of key personnel, change in government policy, or withdrawal/reduction of funding. Changes to modules may for example consist of variations to the content and method of delivery or assessment of modules and other services, to discontinue modules and other services and to merge or combine modules. The University will endeavour to keep such changes to a minimum, and will also keep students informed appropriately by updating our programme specifications and module directory.

The full Procedures, Rules and Regulations of the University governing how it operates are set out in the Charter, Statutes and Ordinances and in the University Regulations, Policy and Procedures.