Describing financial crisis propagation through epidemic modelling on multiplex networks

In this thesis we employ various methods from network science, together with epidemic modelling and extreme value theory, to build and analyse financial crisis propagation models. We use stock price, geographical location, and economic sector data for a set of 398 companies to construct multiplex ne...

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Main Author: Bozhidarova, Malvina
Format: Thesis (University of Nottingham only)
Language:English
Published: 2025
Subjects:
Online Access:https://eprints.nottingham.ac.uk/80220/
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author Bozhidarova, Malvina
author_facet Bozhidarova, Malvina
author_sort Bozhidarova, Malvina
building Nottingham Research Data Repository
collection Online Access
description In this thesis we employ various methods from network science, together with epidemic modelling and extreme value theory, to build and analyse financial crisis propagation models. We use stock price, geographical location, and economic sector data for a set of 398 companies to construct multiplex networks and propose a novel framework for modelling financial contagion using an SIR (Susceptible–Infected–Recovered) epidemic model. We compare different shock transmission models and explore their effectiveness in predicting the spread of financial shock during the 2008 financial crisis and the 2020 financial crisis. To enhance the accuracy of our models, we introduce a change point detection method to detect significant changes in historical crisis data and integrate them into our models accordingly, improving their adaptability to major market events. Additionally, we develop a model that prioritizes recent observations under the assumption that they provide a more accurate reflection of current market conditions and trends, assigning greater weight to recent data while reducing the influence of older data. Our findings highlight the importance of the multiplex network structure, differentiating between various transmission pathways, and demonstrate the value of incorporating change points and weighted observations for more accurate predictions of affected companies, sectors and continents. In addition, there is no single model that performs best in all scenarios. Hence, different predictions tasks, whether forecasting the number of infected companies or making company-specific predictions, may require distinct approaches to achieve more accurate results.
first_indexed 2025-11-14T21:04:09Z
format Thesis (University of Nottingham only)
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institution University of Nottingham Malaysia Campus
institution_category Local University
language English
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publishDate 2025
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spelling nottingham-802202025-07-31T04:40:09Z https://eprints.nottingham.ac.uk/80220/ Describing financial crisis propagation through epidemic modelling on multiplex networks Bozhidarova, Malvina In this thesis we employ various methods from network science, together with epidemic modelling and extreme value theory, to build and analyse financial crisis propagation models. We use stock price, geographical location, and economic sector data for a set of 398 companies to construct multiplex networks and propose a novel framework for modelling financial contagion using an SIR (Susceptible–Infected–Recovered) epidemic model. We compare different shock transmission models and explore their effectiveness in predicting the spread of financial shock during the 2008 financial crisis and the 2020 financial crisis. To enhance the accuracy of our models, we introduce a change point detection method to detect significant changes in historical crisis data and integrate them into our models accordingly, improving their adaptability to major market events. Additionally, we develop a model that prioritizes recent observations under the assumption that they provide a more accurate reflection of current market conditions and trends, assigning greater weight to recent data while reducing the influence of older data. Our findings highlight the importance of the multiplex network structure, differentiating between various transmission pathways, and demonstrate the value of incorporating change points and weighted observations for more accurate predictions of affected companies, sectors and continents. In addition, there is no single model that performs best in all scenarios. Hence, different predictions tasks, whether forecasting the number of infected companies or making company-specific predictions, may require distinct approaches to achieve more accurate results. 2025-07-31 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en cc_by_nc https://eprints.nottingham.ac.uk/80220/1/Bozhidarova%2C%20Malvina%2C%2020302453%2C%20corrected.pdf Bozhidarova, Malvina (2025) Describing financial crisis propagation through epidemic modelling on multiplex networks. PhD thesis, University of Nottingham. financial modelling analysis financial crises
spellingShingle financial modelling
analysis
financial crises
Bozhidarova, Malvina
Describing financial crisis propagation through epidemic modelling on multiplex networks
title Describing financial crisis propagation through epidemic modelling on multiplex networks
title_full Describing financial crisis propagation through epidemic modelling on multiplex networks
title_fullStr Describing financial crisis propagation through epidemic modelling on multiplex networks
title_full_unstemmed Describing financial crisis propagation through epidemic modelling on multiplex networks
title_short Describing financial crisis propagation through epidemic modelling on multiplex networks
title_sort describing financial crisis propagation through epidemic modelling on multiplex networks
topic financial modelling
analysis
financial crises
url https://eprints.nottingham.ac.uk/80220/