2018
DOI: 10.3390/ijgi7090378
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Beyond Spatial Proximity—Classifying Parks and Their Visitors in London Based on Spatiotemporal and Sentiment Analysis of Twitter Data

Abstract: Parks are essential public places and play a central role in urban livability. However, traditional methods of investigating their attractiveness, such as questionnaires and in situ observations, are usually time- and resource-consuming, while providing less transferable and only site-specific results. This paper presents an improved methodology of using social media (Twitter) data to extract spatial and temporal patterns of park visits for urban planning purposes, along with the sentiment of the tweets, focus… Show more

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Cited by 52 publications
(41 citation statements)
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References 77 publications
(94 reference statements)
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“…Roberts applied Twitter to understand urban greenspaces, noting that Twitter data identified the range of events occurring in greenspaces and the diversity of how people use these spaces [21]. Kovacs-Györi et al applied automated sentiment analysis to geotagged tweets over time for multiple urban parks in the UK, finding "people tweeted mostly in parks 3-4 km away from their center of activity and they were more positive than elsewhere while doing so" [22]. The potential exists for extending such analyses to examine values and benefits associated with use of urban greenspaces, through content analysis of social media platforms.…”
Section: Social Media Analysis In the Social Sciencesmentioning
confidence: 99%
“…Roberts applied Twitter to understand urban greenspaces, noting that Twitter data identified the range of events occurring in greenspaces and the diversity of how people use these spaces [21]. Kovacs-Györi et al applied automated sentiment analysis to geotagged tweets over time for multiple urban parks in the UK, finding "people tweeted mostly in parks 3-4 km away from their center of activity and they were more positive than elsewhere while doing so" [22]. The potential exists for extending such analyses to examine values and benefits associated with use of urban greenspaces, through content analysis of social media platforms.…”
Section: Social Media Analysis In the Social Sciencesmentioning
confidence: 99%
“…It suggests that different attitudes may be obtained if the P-F test is applied to test participants with different cultural backgrounds. Some recent studies work in sentiment analysis using Twitter or social networks [36][37][38]. Plunz et al used the Geolocated Twitter Database and classified tweets into three categories of sentiment: positive (p = 1), neutral (p = 0), or negative (p = −1) to compare the content of Twitter sentiment between inside and outside the parks in Manhattan, New York City, and three other districts [36].…”
Section: Discussionmentioning
confidence: 99%
“…Such public spaces play an essential role in offering social contact and allowing relaxed family time. People often want to express their feelings regarding such tourist destinations on Twitter [53]. In contrast, Mubarak Alkabeer had the lowest number of emotional tweets.…”
Section: Topic Explorationmentioning
confidence: 99%