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| DC Field | Value | Language |
|---|---|---|
| dc.contributor.advisor | Lim, J W | - |
| dc.contributor.advisor | Chakrabarty, D | - |
| dc.contributor.author | Zhang, Chuqiao | - |
| dc.date.accessioned | 2026-06-25T09:28:01Z | - |
| dc.date.available | 2026-06-25T09:28:01Z | - |
| dc.date.issued | 2025 | - |
| dc.identifier.uri | http://bura.brunel.ac.uk/handle/2438/33509 | - |
| dc.description | This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University London | en_US |
| dc.description.abstract | In the Bayesian world, referring to a variable as “random” means that this vari-able – a scalar, tensor, a network, etc. – takes a value with a probability, such that it attains a values that live in the support of this probabilistic distribution. lies in a given interval, with uncertainties. We want to make inference on the unknown parameters of a model, using the modelled probability distribution of each such unknown, given the data. In my thesis, I discuss the motivation for undertaking inference via sampling unknowns given the data, and introduce a learning of real-isations of a random graph variable. This random graph is a Random Geometric Graph (RGG) that is drawn in a probabilistic metric space. Further learning of this graph variable has also been explored in the thesis, to identify the optimal cut-off value that is imposed on the posterior probability of any edge given the (multivari-ate) dataset at hand. Such an optimal cut-off then corresponds to graph realisations that produces the most robust - to changes in the cut-off values - graph. Theoretical illustrations of the learning of this graph and the applications of such graph learning are presented using real-world data, towards: (1) scoring of severity of a disease, by computing the distance between the posterior of the learnt random graph variables, given the time series data on the physiological parameters of two patients as they suffer from the disease; (2) a method for the learning of the individualised recovery trajectory of patients who are enrolled on a physical rehabilitation programme, with the aim of regaining their lost mobility; (3) a new way of recognising critical residues of an example protein, using static and dynamic nodal degree distributions of ran-dom graphs learnt using molecular dynamical simulations of the protein. Based on my PhD research, future work is discussed. | en_US |
| dc.publisher | Brunel University London | en_US |
| dc.subject | Probabilistic metric spaces | en_US |
| dc.subject | Machine learning | en_US |
| dc.subject | Statistical distance/divergence measures | en_US |
| dc.subject | Protein Design | en_US |
| dc.subject | Recovery trajectories | en_US |
| dc.title | Learning random geometric graphs, and their applications | en_US |
| dc.type | Thesis | en_US |
| Appears in Collections: | Department of Mathematics Theses Mathematical Sciences | |
Files in This Item:
| File | Description | Size | Format | |
|---|---|---|---|---|
| FulltextThesis.pdf | 29.21 MB | Adobe PDF | View/Open |
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