Learning from Data - 2024 entry
MODULE TITLE | Learning from Data | CREDIT VALUE | 15 |
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MODULE CODE | ECMM445 | MODULE CONVENER | Dr Diogo Pacheco (Coordinator) |
DURATION: TERM | 1 | 2 | 3 |
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DURATION: WEEKS | 11 | 0 | 0 |
Number of Students Taking Module (anticipated) | 30 |
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Artificially intelligent machines and software must assimilate data from their environment and make decisions based upon it. Likewise, we live in a data-rich society and must be able to make sense of complex datasets. This module will introduce you to machine learning methods for learning from data. You will learn about the principal learning paradigms from a theoretical point of view and gain practical experience through a series of workshops. Throughout the module, there will be an emphasis on dealing with real data, and you will use, modify and write software to implement learning algorithms. It is often useful to be able to visualise data and you will gain experience of methods of reducing the dimension of large datasets to facilitate visualisation and understanding.
The module will also cover some recent neural network architectures and related learning algorithms.
This module aims to equip you with the fundamentals of machine learning and at the same time discuss technical aspects of some well-known machine learning models and related learning algorithms. It will provide a thorough grounding in the theory and application of machine learning and statistical techniques for classification, regression and unsupervised methods (clustering and dimension reduction). The module will cover kernel methods and neural networks (feed-forward architectures only).
- Taxonomy of problems and approaches in machine learning and statistical modelling
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Supervised Learning – Classification and Regression
- Decision tree.
- Similarity-based Learning.
- Error based learning.
- Neural Network concepts.
- Ensemble learning concepts.
- Model and classifier evaluation.
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Unsupervised Learning
- Clustering: hierarchical, partitional and density based.
- Cluster Evaluation.
- Association Rules.
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Data description and pre-processing
- Dealing with lass and imbalance and resampling.
- Missing values and imputation.
- Noise and Outlier Detection
- Feature Selection
Scheduled Learning & Teaching Activities | 42 | Guided Independent Study | 108 | Placement / Study Abroad | 0 |
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Category | Hours of study time | Description |
Scheduled learning and teaching activities | 22 | Lectures |
Scheduled learning and teaching activities | 20 | Workshops/tutorials |
Guided independent study | 50 | Individual assessed work |
Guided independent study | 58 | Private study |
Form of Assessment | Size of Assessment (e.g. duration/length) | ILOs Assessed | Feedback Method |
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Feedback on practical work | 12 hours | All | Oral |
MCQ mock quiz | 1 hour | All except 5 | Online quiz |
Coursework | 40 | Written Exams | 60 | Practical Exams | 0 |
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Form of Assessment | % of credit | Size of Assessment (e.g. duration/length) | ILOs Assessed | Feedback Method |
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Multiple choice questions (MCQ) exam – closed book | 60 | 2 hours - Summer Exam Period | All except 5 | Oral on request |
Coursework/Project | 40 | 4,000 words | All | Written |
Original Form of Assessment | Form of Re-assessment | ILOs Re-assessed | Time Scale for Re-assessment |
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Summative Exam | Exam (60%) (2 hours) | All except 5 | August Ref/Def period |
Summative Coursework | Coursework (40%) | All | Completed over summer with a deadline in August |
information that you are expected to consult. Further guidance will be provided by the Module Convener
Basic reading:
Web based and Electronic Resources:
Other Resources:
Reading list for this module:
Type | Author | Title | Edition | Publisher | Year | ISBN |
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Set | Duda and Hart | Pattern Classification and Scene Analysis | 2nd | Wiley | 2002 | 0471056693 |
Set | Webb, A. | Statistical Pattern Recognition | 2 | Wiley | 2002 | 0-470-84513-9 |
Set | Murphy, K. | Machine Learning: A Probabilistic Perspective | 1st | MIT Press | 2012 | 978-0-262-018029 |
Set | Bishop, John C. | Pattern recognition and machine learning | Springer | 2006 | ||
Set | Haykin, S. | Neural Networks and Learning Machines | 3 | Pearson, Prentice Hall | 978-0-13-14713-9- |
CREDIT VALUE | 15 | ECTS VALUE | 7.5 |
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PRE-REQUISITE MODULES | None |
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CO-REQUISITE MODULES | None |
NQF LEVEL (FHEQ) | 7 | AVAILABLE AS DISTANCE LEARNING | No |
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ORIGIN DATE | Thursday 14th March 2024 | LAST REVISION DATE | Thursday 14th March 2024 |
KEY WORDS SEARCH | Data; machine learning; pattern recognition; probability. |
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Please note that all modules are subject to change, please get in touch if you have any questions about this module.