Module Specification

The information contained in this module specification was correct at the time of publication but may be subject to change, either during the session because of unforeseen circumstances, or following review of the module at the end of the session. Queries about the module should be directed to the member of staff with responsibility for the module.
Title COMPUTATIONAL INTELLIGENCE
Code ELEC475
Coordinator Prof JYI Goulermas
Computer Science
J.Y.Goulermas@liverpool.ac.uk
Year CATS Level Semester CATS Value
Session 2020-21 Level 7 FHEQ Second Semester 15

Aims

Understand the basic structures and the learning mechanisms underlying neural networks within the field of artificial intelligence and examine how synaptic adaptation can facilitate learning and how input to output mapping can be performed by neural networks. Obtain an overview of linear, nonlinear, separable and non separable classification as well as supervised and unsupervised mapping. Understand the benefit of adopting naturally inspired techniques to implement optimisation of complex systems and acquire the fundamental knowledge in various evolutionary techniques. Become familiar with the basic concepts of systems optimisation and its role in natural and biological systems and entities.


Pre-requisites before taking this module (other modules and/or general educational/academic requirements):

 

Co-requisite modules:

 

Learning Outcomes

(LO1) Learning  the advantages and main characteristics of neural networks in relation to traditional methodologies. Also, familiarity with different neural networks structures and their learning mechanisms.

(LO2) Appreciation of the advantages of evolutionary-related approaches for optimisation problems and their advantages compared to traditional methodologies. Also, understanding the different techniques of evolutionary optimisation for discrete and continuous configurations.

(LO3) Understanding of the needs for genetic encoding and modelling for solving optimisation problems and familiarisation with the evolutionary operators and their performance.

(LO4) Understanding of the neural network learning processes and their most popular types, as well as  appreciation of how neural networks can be applied to artificial intelligence problems.

(S1) On successful completion of this module the student should be able to pursue further study in artificial intelligence as well as more advanced types of neural networks and evolutionary optimisation and bio-inspired techniques.

(S2) On successful completion of this module the student should be able to analyse numerically the mathematical properties of most major network types and apply them to artificial intelligence problems. Also, the student should be able to appreciate and understand the suitability of evolutionary optimisation in systems where classical methods cannot be effective.

(S3) On successful completion of this module the student should be able to approach methodologically artificial intelligence problems and bio-inspired algorithms in general and understand the principal mathematics of learning systems and the fundamental principles governing evolutionary optimisation techniques.


Syllabus

 

For Neural Networks (part I), 12 lectures delivering the following chapters:
Introduction:

Chapter 1 Structural Aspects:

Chapter 2 Learning Processes:

Chapter 3 Single-Layer Perceptrons:

Chapter 4 Multi-Layer Perceptrons:

Chapter 5 Radial-basis Function Networks:

Chapter 6 Support Vector Machines:

Chapter 7 Self-Organising Maps:

Chapter 8 For Evolutionary Computation

(part II), 12 lectures delivering the following chapters:

Introduction:

Chapter 1 Genetic Algorithms:

Chapter 2 (basic elements)

Chapter 3 (advanced topics)

Chapter 4 (theoretical analysis) Genetic Programming:

Chapter 5 (genetic programming & gene expression programming) Particle Swarm Optimisation:

Chapter 6 (overview and extensions) Evolutionary Strategies:

Chapter 7 (overview and extensions)


Teaching and Learning Strategies

Teaching Method 1 - Lecture
Description:
Attendance Recorded: Not yet decided
Notes: Part 1: Neural Networks (12) and Part 2: Evolutionary Computation (12)

Teaching Method 2 - Tutorial
Description:
Attendance Recorded: Not yet decided
Notes: Tutorials


Teaching Schedule

  Lectures Seminars Tutorials Lab Practicals Fieldwork Placement Other TOTAL
Study Hours 24

  12

      36
Timetable (if known)              
Private Study 114
TOTAL HOURS 150

Assessment

EXAM Duration Timing
(Semester)
% of
final
mark
Resit/resubmission
opportunity
Penalty for late
submission
Notes
Assessment 1 There is a resit opportunity. Standard UoL penalty applies for late submission. Assessment Schedule (When) :Semester 2 Exam period  3 hours    100       
CONTINUOUS Duration Timing
(Semester)
% of
final
mark
Resit/resubmission
opportunity
Penalty for late
submission
Notes
             

Reading List

Reading lists are managed at readinglists.liverpool.ac.uk. Click here to access the reading lists for this module.