6533b7d7fe1ef96bd1269179
RESEARCH PRODUCT
Extracting locations from sport and exercise-related social media messages using a neural network-based bilingual toponym recognition model
Pengyuan LiuSonja KoivistoTuomo HiippalaCharlotte Van Der LijnTuomas VaisanenMarisofia NurmiTuuli ToivonenKirsi VehkakoskiJanne PyykonenIlkka VirmasaloMikko SimulaElina HasanenAnna-katriina SalmikangasPetteri Muukkonensubject
1171 Geosciencespaikkatiedotsocial mediaGEOGRAPHY518 Media and communicationsGeography Planning and Developmentsosiaalinen mediasyväoppiminentoponym recognitionGF Human ecology. AnthropogeographyliikuntaliikuntapaikatACCESSIBILITYDigital geographyGeoparsingSocial mediaGeoreferencingsports geographySPACEComputers in Earth SciencesGV Recreation LeisurepaikannimetMCCtekstinlouhintaToponym recognitiondeep learningDeep learningDASdigital geography113 Computer and information sciencesGFgeoparsinggeoreferencingkoneoppiminenSports geographyPERSPECTIVESZA Information resourceskaupunkimaantiede519 Social and economic geographyZAPLACESGVInformation Systemsdescription
Funding: This study is a part of the “Equality in suburban physical activity environments, YLLI” research project (in Finnish: Yhdenvertainen liikunnallinen lähiö, YLLI). The project is being financed by the research program about suburban in Finland “Lähiöohjelma 2020-2022” coordinated by the Ministry of Environment (grant recipient: Dr. Petteri Muukkonen). Sport and exercise contribute to health and well-being in cities. While previous research has mainly focused on activities at specific locations such as sport facilities, “informal sport” that occur at arbitrary locations across the city have been largely neglected. Such activities are more challenging to observe, but this challenge may be addressed using data collected from social media platforms, because social media users regularly generate content related to sports and exercise at given locations. This allows studying all sport, including those “informal sport” which are at arbitrary locations, to better understand sports and exercise-related activities in cities. However, user-generated geographical information available on social media platforms is becoming scarcer and coarser. This places increased emphasis on extracting location information from free-form text content on social media, which is complicated by multilingualism and informal language. To support this effort, this article presents an end-to-end deep learning-based bilingual toponym recognition model for extracting location information from social media content related to sports and exercise. We show that our approach outperforms five state-of-the-art deep learning and machine learning models. We further demonstrate how our model can be deployed in a geoparsing framework to support city planners in promoting healthy and active lifestyles. Publisher PDF Peer reviewed
year | journal | country | edition | language |
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2022-06-20 |