#London2012: Towards Citizen-Contributed Urban Planning Through Sentiment Analysis of Twitter Data

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Bibliographische Detailangaben
Beteiligte: Kovacs-Gyori, Anna (VerfasserIn), Ristea, Alina (VerfasserIn), Havas, Clemens (VerfasserIn), Resch, Bernd (VerfasserIn), Cabrera-Barona, Pablo (VerfasserIn)
veröffentlicht:
2018
Teil von: Interaktive, elektronische Medien
Medientyp: Buch, E-Book

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Beschreibung: Veröffentlichungsversion
begutachtet (peer reviewed)
In: Urban Planning ; 3 (2018) 1 ; 75-99
DOI: https://doi.org/10.17645/up.v3i1.1287
Sprache: Englisch
Teil von: Interaktive, elektronische Medien
Schlagwörter:
GIS
Kollektion: SSOAR Social Science Open Access Repository
Inhaltsangabe

The dynamic nature of cities, understood as complex systems with a variety of concurring factors, poses significant challenges to urban analysis for supporting planning processes. This particularly applies to large urban events because their characteristics often contradict daily planning routines. Due to the availability of large amounts of data, social media offer the possibility for fine-scale spatial and temporal analysis in this context, especially regarding public emotions related to varied topics. Thus, this article proposes a combined approach for analyzing large sports events considering event days vs comparison days (before or after the event) and different user groups (residents vs visitors), as well as integrating sentiment analysis and topic extraction. Our results based on various analyses of tweets demonstrate that different spatial and temporal patterns can be identified, clearly distinguishing both residents and visitors, along with positive or negative sentiment. Furthermore, we could assign tweets to specific urban events or extract topics related to the transportation infrastructure. Although the results are potentially able to support urban planning processes of large events, the approach still shows some limitations including well-known biases in social media or shortcomings in identifying the user groups and in the topic modeling approach.