Learning Digital Geographies through a Graph-Based Semi-supervised Approach
conference contribution
posted on 2020-05-15, 09:14authored byP Liu, S De Sabbata
As social media have become an integral part of many people’s everyday life,
there has been an increasing interest in exploring how the content shared through those online platforms comes to contribute to the collaborative creation of places in physical space.
Indeed, the distinction between online and physical spaces and activities is rapidly degrading. However, exploring those digital geographies is a complex task, due to the quantity
and variety of data. In this paper, we introduce a semi-supervised, deep neural network
approach to classify geo-located social media posts based on their text content, media content, and geographic location, using a limited set of pre-defined categories. Our approach
combines a stacked multi-modal autoencoder neural network to create joint representations
of text and images, and graph convolution neural network for semi-supervised classification. The results presented in this paper show that our approach performs the classification
of social media content with higher accuracy than a traditional Support Vector Machine
model. Thus, the presented approach has the potential to develop in a powerful tool to
complement content analysis in the study of digital geographies.
History
Citation
Journal of Spatial Information Science, 2020, In Press
Author affiliation
/Organisation/COLLEGE OF SCIENCE AND ENGINEERING/School of Geography, Geology and the Environment