Unit name | Complex Networks 4 |
---|---|
Unit code | MATHM6201 |
Credit points | 20 |
Level of study | M/7 |
Teaching block(s) |
Teaching Block 1 (weeks 1 - 12) |
Unit director | Dr. Ayalvadi Ganesh |
Open unit status | Not open |
Pre-requisites |
MATH11005 Linear Algebra and Geometry and MATH20008 Probability 2 |
Co-requisites |
None |
School/department | School of Mathematics |
Faculty | Faculty of Science |
Unit Aims
Networks are very widely used in mathematical modelling. They can describe physical systems such as transportation or telecommunication networks, or interactions between agents such as in social networks of humans or other biological organisms. It is of interest to study both the structure of the network, and dynamical processes occurring on a network.
Motivated by such questions, this unit will introduce a number of different random processes to model information spread, consensus formation, and random walks on networks. We will also study random network models and some of their properties.
The course will emphasise both proofs and applications.
Unit Description
This unit will teach ways of modelling and working with large networks such as the Internet and social networks. The topics covered will be:
Relation to Other Units
The unit applies basic probabilistic models studied in Probability 2, specifically Markov chains and martingales, to the study of random processes on networks.
Graph theory would also have been introduced in Combinatorics. This unit does not have significant overlap with Combinatorics but takes a complementary approach to studying graphs using probability.
The course provides an interesting applied context for deepening the student's understanding of probabilistic techniques learnt in other courses such as Probability 2 and Martingale Theory and Applications.
Transferable Skills
Learn about probabilistic models such as Markox chains and martingales. Develop the ability to apply them in the context of networks and stochastic processes on networks.
The unit will be taught through a combination of
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