Maxime Masson
2024
TextBI: An Interactive Dashboard for Visualizing Multidimensional NLP Annotations in Social Media Data
Maxime Masson
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Christian Sallaberry
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Marie-Noelle Bessagnet
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Annig Le Parc Lacayrelle
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Philippe Roose
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Rodrigo Agerri
Proceedings of the 18th Conference of the European Chapter of the Association for Computational Linguistics: System Demonstrations
In this paper we introduce TextBI, a multimodal generic dashboard designed to present multidimensional text annotations on large volumes of multilingual social media data. This tool focuses on four core dimensions: spatial, temporal, thematic, and personal, and also supports additional enrichment data such as sentiment and engagement. Multiple visualization modes are offered, including frequency, movement, and association. This dashboard addresses the challenge of facilitating the interpretation of NLP annotations by visualizing them in a user-friendly, interactive interface catering to two categories of users: (1) domain stakeholders and (2) NLP researchers. We conducted experiments within the domain of tourism leveraging data from X (formerly Twitter) and incorporating requirements from tourism offices. Our approach, TextBI, represents a significant advancement in the field of visualizing NLP annotations by integrating and blending features from a variety of Business Intelligence, Geographical Information Systems and NLP tools. A demonstration video is also provided https://youtu.be/x714RKvo9Cg