Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models

In developing countries it is challenging to collect data on poverty and its associated community health characteristics. Data collection in this context is impractically laborious and resource greedy. Additionally due to the sensitive nature of these themes the data is often unreliable. There is a...

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Main Author: Ellis, Madeleine
Format: Thesis (University of Nottingham only)
Language:English
Published: 2021
Subjects:
Online Access:https://eprints.nottingham.ac.uk/67041/
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author Ellis, Madeleine
author_facet Ellis, Madeleine
author_sort Ellis, Madeleine
building Nottingham Research Data Repository
collection Online Access
description In developing countries it is challenging to collect data on poverty and its associated community health characteristics. Data collection in this context is impractically laborious and resource greedy. Additionally due to the sensitive nature of these themes the data is often unreliable. There is a need for alternative methods of detection of vulnerable communities. However, promising opportunities arise via novel rich data streams such as Call Data Records stemming from the ubiquitous use of mobile phones. Despite the growth of Call Data Record data there has been limited previous application to problems of poverty and development. This thesis makes three main contributions: (i) Methods of collecting ground truth data in Developing areas; (ii) Best practices in application to detect vulnerable regions; (iii) Development of new applications of statistical approaches to the problem via the stochastic block model. This work is focused on Dar es Salaam in Tanzania. Having more reliable and easily accessible truths on these vulnerabilities can have a high potential impact for policy makers and NGOs trying to make positive changes to reduce devastating effects of poverty. This thesis produces comprehensive results to amend the current knowledge gaps, via rigorous fine-grained data collection processes surveying the 452 subwards in Dar es Salaam in relation to poverty and social vulnerability.
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language English
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spelling nottingham-670412021-12-08T04:40:45Z https://eprints.nottingham.ac.uk/67041/ Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models Ellis, Madeleine In developing countries it is challenging to collect data on poverty and its associated community health characteristics. Data collection in this context is impractically laborious and resource greedy. Additionally due to the sensitive nature of these themes the data is often unreliable. There is a need for alternative methods of detection of vulnerable communities. However, promising opportunities arise via novel rich data streams such as Call Data Records stemming from the ubiquitous use of mobile phones. Despite the growth of Call Data Record data there has been limited previous application to problems of poverty and development. This thesis makes three main contributions: (i) Methods of collecting ground truth data in Developing areas; (ii) Best practices in application to detect vulnerable regions; (iii) Development of new applications of statistical approaches to the problem via the stochastic block model. This work is focused on Dar es Salaam in Tanzania. Having more reliable and easily accessible truths on these vulnerabilities can have a high potential impact for policy makers and NGOs trying to make positive changes to reduce devastating effects of poverty. This thesis produces comprehensive results to amend the current knowledge gaps, via rigorous fine-grained data collection processes surveying the 452 subwards in Dar es Salaam in relation to poverty and social vulnerability. 2021-12-08 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en cc_by https://eprints.nottingham.ac.uk/67041/1/Maddy_Thesis%20%282%29.pdf Ellis, Madeleine (2021) Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models. PhD thesis, University of Nottingham. Communities; Poverty Research; Dar es Salaam (Tanzania); Cell phones; Public health; Data transmission systems
spellingShingle Communities; Poverty
Research; Dar es Salaam (Tanzania); Cell phones; Public health; Data transmission systems
Ellis, Madeleine
Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models
title Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models
title_full Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models
title_fullStr Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models
title_full_unstemmed Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models
title_short Detection of vulnerable communities in East Africa via novel data streams and dynamic stochastic block models
title_sort detection of vulnerable communities in east africa via novel data streams and dynamic stochastic block models
topic Communities; Poverty
Research; Dar es Salaam (Tanzania); Cell phones; Public health; Data transmission systems
url https://eprints.nottingham.ac.uk/67041/