Understanding an Urban Park through Big Data

To meet the needs of park users, planners and designers must know what park users want to do and how they want the park to offer different activities. Big data may help planners and designers gain this knowledge. This study examines how big data collected in an urban park could be used to identify m...

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Veröffentlicht in:International journal of environmental research and public health 2019-10, Vol.16 (20), p.3816
Hauptverfasser: Sim, Jisoo, Miller, Patrick
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Miller, Patrick
description To meet the needs of park users, planners and designers must know what park users want to do and how they want the park to offer different activities. Big data may help planners and designers gain this knowledge. This study examines how big data collected in an urban park could be used to identify meaningful implications for planning and design. While big data have emerged as a new data source, big data have not become an accepted source of data due to a lack of understanding of big data analytics. By comparing a survey as a traditional data source with big data, this study identifies the strengths and weaknesses of using big data analytics in park planning and design. There are two research questions: (1) what activities do park users want; and (2) how satisfied are users with different activities. The Gyeongui Line Forest Park, which was built on an abandoned railway, was selected as the study site. A total of 177 responses were collected through the onsite survey, and 3703 tweets mentioning the park were collected from Twitter. Results from the survey show that ordinary activities such as walking and taking a rest in the park were the most common. These findings also support existing studies. The results from social media analytics found notable things such as positive tweets about how the railway was turned into a park, and negative tweets about diseases that may occur in the park. Therefore, a survey as traditional data and social media analytics as big data can be complementary methods for the design and planning process.
doi_str_mv 10.3390/ijerph16203816
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source MDPI - Multidisciplinary Digital Publishing Institute; MEDLINE; Elektronische Zeitschriftenbibliothek - Frei zugängliche E-Journals; PubMed Central; Free Full-Text Journals in Chemistry; Sociological Abstracts; PubMed Central Open Access
subjects Adolescent
Adult
Attitudes
Big Data
Cities
City Planning
Content analysis
Data analysis
Digital media
Ethnic groups
Female
Gender
Humans
Information Storage and Retrieval
Landscape architecture
Literature reviews
Male
Mass media
Middle Aged
Minority & ethnic groups
Parks
Parks & recreation areas
Parks, Recreational
Public opinion
Researchers
Social interaction
Social media
Social Media - statistics & numerical data
Social networks
Surveys and Questionnaires
Urban areas
Urban studies
User behavior
Young Adult
title Understanding an Urban Park through Big Data
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