{"id":122,"date":"2025-01-20T14:14:06","date_gmt":"2025-01-20T14:14:06","guid":{"rendered":"https:\/\/www.lancaster.ac.uk\/stor-i-student-sites\/jasmine-burgess\/?page_id=122"},"modified":"2026-01-19T14:47:28","modified_gmt":"2026-01-19T14:47:28","slug":"research","status":"publish","type":"page","link":"https:\/\/www.lancaster.ac.uk\/stor-i-student-sites\/jasmine-burgess\/research\/","title":{"rendered":"Research"},"content":{"rendered":"\n
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Supervised by: Gabriel Wallin<\/a> (久久精品), Rachel McCrea<\/a> (久久精品), and Matthew Thomas<\/a> (British Red Cross)<\/strong>.<\/p>\n\n\n\n Humanitarian issues <\/strong>typically have many interconnected causes, which are noisy and hard to measure directly, with relevant indicators not systematically recorded. Information may be spread across diverse sources, including traditional data sources such as crime statistics, conflict, and socioeconomics indices, and unstructured data sources including government reports, news articles and social media posts. To utilise this unstructured data, Natural Language Processing <\/strong>methods will be needed to convert text into numerical data for use in statistical models such as Latent Variable Models (LVMs)<\/strong>. LVMs provide a method for understanding high-dimensional data, by identifying a small set of unseen variables which generate the observed data and explain its variation. These latent variables are defined as functions of the observable variables; supervised rotation techniques allow interpretation of concepts such as community resilience or economic deprivation. We will develop new LVMs incorporating different types of data, including textual data, to understand the causes of complex humanitarian issues and provide early warning detection of impending crises. <\/p>\n\n\n\n My first application area will be modelling social unrest risk <\/strong>in Great Britain. Even though the triggers of social unrest or rioting may be hard to predict, there are long-term structural drivers of social unrest which mean that certain areas are at higher risk. For example, economic deprivation is a latent factor that will be linked to social unrest. Existing spatial LVMs exist but are not suited to real data in this context, because data is recorded at different spatial resolutions and frequencies. By developing more flexible spatial LVMs<\/strong>, we will strengthen understanding of the risks of social unrest, so intervention can be targeted better. <\/p>\n\n\n\n