Land use identification through social network interaction
Diana C. Pauca-Quispe, Cinthya Butron-Revilla, Ernesto Suarez-Lopez,, Karla Aranibar-Tila, Jesus S. Aguilar-Ruiz

TL;DR
This paper presents a novel NLP-based method to identify land use types from Twitter data, achieving about 90% accuracy, aiding urban planning especially in developing regions.
Contribution
It introduces a new methodology combining keyword extraction and geolocation from social media to classify land use categories in South American cities.
Findings
Achieved approximately 90% accuracy in land use classification.
Enabled detailed land use mapping at a lower cost.
Provided up-to-date land use information for urban planning.
Abstract
The Internet generates large volumes of data at a high rate, in particular, posts on social networks. Although social network data has numerous semantic adulterations, and is not intended to be a source of geo-spatial information, in the text of posts we find pieces of important information about how people relate to their environment, which can be used to identify interesting aspects of how human beings interact with portions of land based on their activities. This research proposes a methodology for the identification of land uses using Natural Language Processing (NLP) from the contents of the popular social network Twitter. It will be approached by identifying keywords with linguistic patterns from the text, and the geographical coordinates associated with the publication. Context-specific innovations are introduced to deal with data across South America and, in particular, in the…
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Taxonomy
TopicsLand Use and Ecosystem Services
