Assessing experienced tranquillity through natural language processing and landscape ecology measures

<p><b>Context</b></p> Identifying tranquil areas is important for landscape planning and policy-making. Research demonstrated discrepancies between modelled potential tranquil areas and where people experience tranquillity based on field surveys. Because surveys are resource-...

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Main Authors: Wartmann, FM, Koblet, O, Purves, RS
Format: Journal article
Language:English
Published: Springer Nature 2021
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author Wartmann, FM
Koblet, O
Purves, RS
author_facet Wartmann, FM
Koblet, O
Purves, RS
author_sort Wartmann, FM
collection OXFORD
description <p><b>Context</b></p> Identifying tranquil areas is important for landscape planning and policy-making. Research demonstrated discrepancies between modelled potential tranquil areas and where people experience tranquillity based on field surveys. Because surveys are resource-intensive, user-generated text data offers potential for extracting where people experience tranquillity. <p><b>Objectives</b></p> We explore and model the relationship between landscape ecological measures and experienced tranquillity extracted from user-generated text descriptions. <p><b>Methods</b></p> Georeferenced, user-generated landscape descriptions from Geograph.UK were filtered using keywords related to tranquillity. We stratify resulting tranquil locations according to dominant land cover and quantify the influence of landscape characteristics including diversity and naturalness on explaining the presence of tranquillity. Finally, we apply natural language processing to identify terms linked to tranquillity keywords and compare the similarity of these terms across land cover classes. <p><b>Results</b></p> Evaluation of potential keywords yielded six keywords associated with experienced tranquillity, resulting in 15,350 extracted tranquillity descriptions. The two most common land cover classes associated with tranquillity were arable and horticulture, and improved grassland, followed by urban and suburban. In the logistic regression model across all land cover classes, freshwater, elevation and naturalness were positive predictors of tranquillity. Built-up area was a negative predictor. Descriptions of tranquillity were most similar between improved grassland and arable and horticulture, and most dissimilar between arable and horticulture and urban. <p><b>Conclusions</b></p> This study highlights the potential of applying natural language processing to extract experienced tranquillity from text, and demonstrates links between landscape ecological measures and tranquillity as a perceived landscape quality.
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spelling oxford-uuid:54dd16d3-4e7c-4645-9f91-53001a68aadf2024-03-06T14:57:32ZAssessing experienced tranquillity through natural language processing and landscape ecology measuresJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:54dd16d3-4e7c-4645-9f91-53001a68aadfEnglishSymplectic ElementsSpringer Nature2021Wartmann, FMKoblet, OPurves, RS<p><b>Context</b></p> Identifying tranquil areas is important for landscape planning and policy-making. Research demonstrated discrepancies between modelled potential tranquil areas and where people experience tranquillity based on field surveys. Because surveys are resource-intensive, user-generated text data offers potential for extracting where people experience tranquillity. <p><b>Objectives</b></p> We explore and model the relationship between landscape ecological measures and experienced tranquillity extracted from user-generated text descriptions. <p><b>Methods</b></p> Georeferenced, user-generated landscape descriptions from Geograph.UK were filtered using keywords related to tranquillity. We stratify resulting tranquil locations according to dominant land cover and quantify the influence of landscape characteristics including diversity and naturalness on explaining the presence of tranquillity. Finally, we apply natural language processing to identify terms linked to tranquillity keywords and compare the similarity of these terms across land cover classes. <p><b>Results</b></p> Evaluation of potential keywords yielded six keywords associated with experienced tranquillity, resulting in 15,350 extracted tranquillity descriptions. The two most common land cover classes associated with tranquillity were arable and horticulture, and improved grassland, followed by urban and suburban. In the logistic regression model across all land cover classes, freshwater, elevation and naturalness were positive predictors of tranquillity. Built-up area was a negative predictor. Descriptions of tranquillity were most similar between improved grassland and arable and horticulture, and most dissimilar between arable and horticulture and urban. <p><b>Conclusions</b></p> This study highlights the potential of applying natural language processing to extract experienced tranquillity from text, and demonstrates links between landscape ecological measures and tranquillity as a perceived landscape quality.
spellingShingle Wartmann, FM
Koblet, O
Purves, RS
Assessing experienced tranquillity through natural language processing and landscape ecology measures
title Assessing experienced tranquillity through natural language processing and landscape ecology measures
title_full Assessing experienced tranquillity through natural language processing and landscape ecology measures
title_fullStr Assessing experienced tranquillity through natural language processing and landscape ecology measures
title_full_unstemmed Assessing experienced tranquillity through natural language processing and landscape ecology measures
title_short Assessing experienced tranquillity through natural language processing and landscape ecology measures
title_sort assessing experienced tranquillity through natural language processing and landscape ecology measures
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AT kobleto assessingexperiencedtranquillitythroughnaturallanguageprocessingandlandscapeecologymeasures
AT purvesrs assessingexperiencedtranquillitythroughnaturallanguageprocessingandlandscapeecologymeasures