Analyzing and visualizing large amounts
of social media communications and contrasting
short-term conversation changes
over time and geo-locations is extremely
important for commercial and government
applications. Earlier approaches for large-scale
text stream summarization used dynamic
topic models and trending words.
Instead, we rely on text embeddings –
low-dimensional word representations in
a continuous vector space where similar
words are embedded nearby each other.
This paper presents ESTEEM,1 a novel
tool for visualizing and evaluating spatiotemporal
embeddings learned from
streaming social media texts. Our tool allows
users to monitor and analyze query
words and their closest neighbors with
an interactive interface. We used state-of-
the-art techniques to learn embeddings
and developed a visualization to represent
dynamically changing relations between
words in social media over time and other
dimensions. This is the first interactive
visualization of streaming text representations
learned from social media texts that
also allows users to contrast differences
across multiple dimensions of the data.
Revised: July 31, 2017 |
Published: July 30, 2017
Citation
Arendt D.L., and S. Volkova. 2017.ESTEEM: A Novel Framework for Qualitatively Evaluating and Visualizing Spatiotemporal Embeddings in Social Media. In Proceedings of the 55th Annual Meeting of the Association for Computational Linguistics (ACL 2017) - System Demonstrations, July 30-August 4, 2017, Vancouver, BC, Canada, 2, 25-30; Paper No. P17-4005. Stroudsburg, Pennsylvania:Association for Computational Linguistics.PNNL-SA-125290.doi:10.18653/v1/P17-4005