Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution

Water pollution is a significant global menace to human health, ecosystems, and economic progress. Despite advancements towards achieving the United Nations Sustainable Development Goals (SDGs) regarding accessible clean water and sanitation, water pollution remains a substantial hurdle. Active invo...

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Main Author: Falaye, Adewale
Format: Thesis (University of Nottingham only)
Language:English
Published: 2023
Subjects:
Online Access:https://eprints.nottingham.ac.uk/76704/
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author Falaye, Adewale
author_facet Falaye, Adewale
author_sort Falaye, Adewale
building Nottingham Research Data Repository
collection Online Access
description Water pollution is a significant global menace to human health, ecosystems, and economic progress. Despite advancements towards achieving the United Nations Sustainable Development Goals (SDGs) regarding accessible clean water and sanitation, water pollution remains a substantial hurdle. Active involvement of the public is vital in curbing water pollution, and comprehending their viewpoints and knowledge is pivotal for effective behavior modification. The indispensability of social media in our daily lives cannot be overstated, as it has emerged as the preeminent influential platform for educating society and gathering public perceptions. By utilizing data mining techniques, Social media platforms has the potential to convert public opinions into invaluable Volunteered Geographic Information (VGI), thus promoting citizen science. This study duly recognizes the potency of social media, particularly Twitter, as an efficient tool for mapping water pollution patterns, trends, events, and public sentiments. By conducting spatial analysis and data mining on Twitter data, a wealth of valuable insights is unveiled. These insights encompass the identification of pollution hotspots, pinpointing event locations, the acquisition of knowledge regarding their underlying causes of pollution, regional disparities in these causes, measurement of sentiments on the topic across regions, and the formulation of potential resource management strategies. These contributions are in direct alignment with the overarching goal of achieving a net-zero-plus future, which resonates with the UN SDGs.
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spelling nottingham-767042025-02-28T15:19:25Z https://eprints.nottingham.ac.uk/76704/ Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution Falaye, Adewale Water pollution is a significant global menace to human health, ecosystems, and economic progress. Despite advancements towards achieving the United Nations Sustainable Development Goals (SDGs) regarding accessible clean water and sanitation, water pollution remains a substantial hurdle. Active involvement of the public is vital in curbing water pollution, and comprehending their viewpoints and knowledge is pivotal for effective behavior modification. The indispensability of social media in our daily lives cannot be overstated, as it has emerged as the preeminent influential platform for educating society and gathering public perceptions. By utilizing data mining techniques, Social media platforms has the potential to convert public opinions into invaluable Volunteered Geographic Information (VGI), thus promoting citizen science. This study duly recognizes the potency of social media, particularly Twitter, as an efficient tool for mapping water pollution patterns, trends, events, and public sentiments. By conducting spatial analysis and data mining on Twitter data, a wealth of valuable insights is unveiled. These insights encompass the identification of pollution hotspots, pinpointing event locations, the acquisition of knowledge regarding their underlying causes of pollution, regional disparities in these causes, measurement of sentiments on the topic across regions, and the formulation of potential resource management strategies. These contributions are in direct alignment with the overarching goal of achieving a net-zero-plus future, which resonates with the UN SDGs. 2023-12-14 Thesis (University of Nottingham only) NonPeerReviewed application/pdf en cc_by https://eprints.nottingham.ac.uk/76704/1/MRes_Thesis%20%2820477598%29.pdf Falaye, Adewale (2023) Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution. MRes thesis, University of Nottingham. Volunteered Geographic Information Social Media Twitter Data Mining Latent Dirichlet Allocation Latent Semantic Analysis Water Pollution Spatial Analysis
spellingShingle Volunteered Geographic Information
Social Media
Twitter
Data Mining
Latent Dirichlet Allocation
Latent Semantic Analysis
Water Pollution
Spatial Analysis
Falaye, Adewale
Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution
title Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution
title_full Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution
title_fullStr Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution
title_full_unstemmed Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution
title_short Data mining and spatial analysis of Twitter as a resource for assessing UK water pollution
title_sort data mining and spatial analysis of twitter as a resource for assessing uk water pollution
topic Volunteered Geographic Information
Social Media
Twitter
Data Mining
Latent Dirichlet Allocation
Latent Semantic Analysis
Water Pollution
Spatial Analysis
url https://eprints.nottingham.ac.uk/76704/