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Title An Integrated Model for Textual Social Media Data with Spatio-Temporal Dimensions
Authors Juglar Díaz, Bárbara Poblete, Felipe Bravo-Marquez
Publication date September 2020
Abstract GPS-enabled devices and social media popularity have
created an
unprecedented opportunity for researchers to collect, explore, and analyze
text data with fine-grained spatial and temporal metadata. In this sense,
text, time and space are different domains with their own representation
scales and methods. This poses a challenge on how to detect relevant
patterns that may only arise from the combination of text with
spatio-temporal elements. In particular, spatio-temporal textual data
representation has relied on feature embedding techniques. This can limit a
model's expressiveness for representing certain patterns extracted from
the sequence structure of textual data. To deal with the aforementioned
problems, we propose an Acceptor recurrent neural network model that
jointly
models spatio-temporal textual data. Our goal is to focus on representing
the mutual influence and relationships that can exist between written
language and the time-and-place where it was produced. We represent space,
time, and text as tuples, and use pairs of elements to predict a third one.
This results in three predictive tasks that are trained simultaneously. We
conduct experiments on two social media datasets and on a crime dataset; we
use Mean Reciprocal Rank as evaluation metric. Our experiments show that
our
model outperforms state-of-the-art methods ranging from a 5.5% to a 24.7%
improvement for location and time prediction.
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Volume 57
Journal name Information Processing and Management
Publisher Elsevier Science (Amsterdam, The Netherlands)
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