This module provides an introduction to the theory and implementation of neural networks and an understanding of the important computational neural network architecture and methodology. It aims to give students sufficient knowledge to enable employment or postgraduate study involving neural networks.
This module provides an introduction to the theory and implementation of neural networks, both biological and artificial. It aims to give students sufficient knowledge to enable employment or postgraduate study involving neural networks.
This is an indicative module outline only to give an indication of the sort of topics that may be covered. Actual sessions held may differ.
Introduction: What Is a Neural Network; AI and Neural Computing; Three Types of Learning Paradigms; Transfer Learning; Pre-Stage: Making Your Own Neural Network from Scratch: The Tools You Will Need; Demo: Creating a Neural Network for Live Image Classification
Biological Neural Networks: Biological Neuron Structure and Function; Action Potential; Synaptic Transmission; A Brief History of Neural Nets & Deep Learning; Comparison between Biological and Artificial Neural Networks; Basic Principles of Artificial Neural Networks; Different Types of Neural Networks;
Single-Layer Perceptron: McCulloch-Pitts Neuron; Definition of Perceptron; Weights, Bias, Node, Activation Functions; Perceptron Case Study: Digital Number Recognition; Mimic Logic Operations (AND, OR, NOT); XOR Linear Inseparability Problem; Perceptron Learning Rule; Demo: Implementing MP Neuron using MATLAB
Multi-Layer Forward Propagation: Representation of Multi-Layer Neural Networks; Predicting Multi-Layer Neural Network Output; Common Nonlinear Activation Functions; How to Choose an Activation Function for Your Model; Forward Propagation for Deep Neural Networks; Vectorisation; Demo: Recognise Seven-Segment Numerals
Using Perceptron
Loss Function & Gradient Descent: Different Loss Functions (e.g., MAE, MSE, Cross Entropy Loss); 1D & 2D Forms of Gradient Descent Methods; Variations of Gradient Descent (e.g., Momentum, RMSProp, Adam); Saddle Points; Gradient Descent vs. Newton Method; Stochastic & Mini-Batch Gradient Descent;
Backpropagation: Computation Graph; Matrix Calculus Revisited; Backpropagation in Logistic Regression; Backpropagation in Multi-Layered NNs; Vanishing Gradient Problems
Overfitting & Regularization: Bias and Variance; What is Regularization; How does Regularization help in Reducing Overfitting; Different Regularization Techniques (e.g. Lasso & Ridge Regularization, Dropout, Data Augmentation, Early Stopping)
Recurrent Neural Network: Sequence Model; One-hot Representation; Forward and Backward Propagations; Different Types of Recurrent Neural Networks; Elman and Jordan Networks; Bidirectional Recurrent Neural Network; Vanishing & Exploding Gradient Problems; Gated Recurrent Units (GRU); Long Short-Term Memory Networks (LSTM); Time Series Analysis (optional)
Graph Neural Networks (GNNs): Basics of Graph Mining; Google PageRank; Pairwise Similarity Model (e.g., SimRank, Penetrating-Rank, RoleSim); Convolutional Neural Network; Graph Embedding; Node2vec (optional); GNN Applications in NLP (optional);
By the end of the module, students should be able to:
Michael Taylor. Make Your Own Neural Network: An In-Depth Visual Introduction for Beginners. Amazon Digital Services LLC - Kdp Print Us, 2017, ISBN: 1549869132, 9781549869136
Graupe Daniel. Principles of Artificial Neural Networks: Basic Designs to Deep Learning (4th Edition). World Scientific, 2019, ISBN: 9811201242, 9789811201240
James Loy. Neural Network Projects with Python: The ultimate guide to using Python to explore the true power of neural networks through six projects, Packt Publishing Ltd, 2019, ISBN: 1789133319, 9781789133318
Type | Required |
---|---|
Lectures | 22 sessions of 1 hour (15%) |
Seminars | 2 sessions of 1 hour (1%) |
Practical classes | 6 sessions of 1 hour (4%) |
Private study | 120 hours (80%) |
Total | 150 hours |
Private study, background reading and revision
No further costs have been identified for this module.
You do not need to pass all assessment components to pass the module.
Students can register for this module without taking any assessment.
Weighting | Study time | Eligible for self-certification | |
---|---|---|---|
assignment | 20% | Yes (extension) | |
In-person Examination | 80% | No | |
CS331 Examination
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Weighting | Study time | Eligible for self-certification | |
---|---|---|---|
In-person Examination - Resit | 100% | No | |
CS331 resit Examination
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Individual written feedback on coursework
This module is Optional for:
This module is Option list A for:
This module is Option list B for:
This module is Option list D for: