Postgraduate Programme and Module Handbook 2021-2022 (archived)
Module MATH52115: Advanced Statistics and Machine Learning: Regression and Classification
Department: Mathematical Sciences
MATH52115: Advanced Statistics and Machine Learning: Regression and Classification
Type | Tied | Level | 5 | Credits | 15 | Availability | Available in 2021/22 | Module Cap | None. |
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Prerequisites
- Advanced Statistical and Machine Learning: Foundations and Unsupervised Learning
Corequisites
- None
Excluded Combination of Modules
- None
Aims
- Provide advanced knowledge and critical understanding of the paradigms and fundamental ideas of Bayesian statistics and machine learning.
- Provide advanced knowledge and critical understanding of the methodology and applications of Bayesian statistics and machine learning.
Content
- Advanced statistical modelling (e.g. linear models, graphical models, Gaussian processes).
- Advanced supervised machine learning (e.g. random forests, boosting, deep neural networks, deep statistical models).
Learning Outcomes
Subject-specific Knowledge:
- Advanced understanding of statistical modelling frameworks and methods.
- Advanced understanding of supervised machine learning frameworks and methods.
Subject-specific Skills:
- Ability to use Bayesian theory and inference to frame, analyse, and formalize practical problems, and to reflect critically upon this use.
- Ability to select and apply appropriate computationally-intensive methods to practical problems, and to reflect critically upon their application.
- Ability to select or to develop, and to apply, appropriate models to practical problems, and to reflect critically upon their application.
- Ability to select, adapt, and apply appropriate machine learning methods to practical problems, and to reflect critically upon their application.
Key Skills:
Modes of Teaching, Learning and Assessment and how these contribute to the learning outcomes of the module
- Lectures demonstrate what is required to be learned and the application of the theory to concrete examples.
- Practical classes concretize understanding via the application of calculational and computational methods to more complex problems, as well as providing feedback and encouraging active engagement.
- Coursework will assess students' ability to implement calculational and computational methods on both synthetic and real problems.
Teaching Methods and Learning Hours
Activity | Number | Frequency | Duration | Total/Hours | |
---|---|---|---|---|---|
Lectures on Regression | 12 | 3 per week, weeks 16 - 19, term 2 | 1 hour | 12 | |
Practical classes on Regression | 4 | 1 per week, weeks 16 - 19, term 2 | 1 hour | 4 | |
Lectures on Classification | 12 | 3 per week, weeks 16 - 19, term 2 | 1 hour | 12 | |
Practical classes on Classification | 4 | 1 per week, weeks 16 - 19, term | 1 hour | 4 | |
Preparation, reading, and self-study | 118 |
Summative Assessment
Component: Coursework | Component Weighting: 100% | ||
---|---|---|---|
Element | Length / duration | Element Weighting | Resit Opportunity |
Coursework on Regression | 5 weeks | 50% | |
Coursework on Classification | 5 weeks | 50% |
Formative Assessment:
■ Attendance at all activities marked with this symbol will be monitored. Students who fail to attend these activities, or to complete the summative or formative assessment specified above, will be subject to the procedures defined in the University's General Regulation V, and may be required to leave the University