Talayeh Riahi
2022
TweetNLP: Cutting-Edge Natural Language Processing for Social Media
Jose Camacho-collados
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Kiamehr Rezaee
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Talayeh Riahi
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Asahi Ushio
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Daniel Loureiro
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Dimosthenis Antypas
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Joanne Boisson
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Luis Espinosa Anke
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Fangyu Liu
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Eugenio Martínez Cámara
Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing: System Demonstrations
In this paper we present TweetNLP, an integrated platform for Natural Language Processing (NLP) in social media. TweetNLP supports a diverse set of NLP tasks, including generic focus areas such as sentiment analysis and named entity recognition, as well as social media-specific tasks such as emoji prediction and offensive language identification. Task-specific systems are powered by reasonably-sized Transformer-based language models specialized on social media text (in particular, Twitter) which can be run without the need for dedicated hardware or cloud services. The main contributions of TweetNLP are: (1) an integrated Python library for a modern toolkit supporting social media analysis using our various task-specific models adapted to the social domain; (2) an interactive online demo for codeless experimentation using our models; and (3) a tutorial covering a wide variety of typical social media applications.
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Co-authors
- Jose Camacho-Collados 1
- Kiamehr Rezaee 1
- Asahi Ushio 1
- Daniel Loureiro 1
- Dimosthenis Antypas 1
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