TweeNLP: A Twitter Exploration Portal for Natural Language Processing
- URL: http://arxiv.org/abs/2106.10512v1
- Date: Sat, 19 Jun 2021 15:11:22 GMT
- Title: TweeNLP: A Twitter Exploration Portal for Natural Language Processing
- Authors: Viraj Shah, Shruti Singh, Mayank Singh
- Abstract summary: TweeNLP is a one-stop portal that organizes Twitter's natural language processing (NLP) data.
It curates 19,395 tweets (as of April 2021) from various NLP conferences and general NLP discussions.
- Score: 5.315717519923849
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present TweeNLP, a one-stop portal that organizes Twitter's natural
language processing (NLP) data and builds a visualization and exploration
platform. It curates 19,395 tweets (as of April 2021) from various NLP
conferences and general NLP discussions. It supports multiple features such as
TweetExplorer to explore tweets by topics, visualize insights from Twitter
activity throughout the organization cycle of conferences, discover popular
research papers and researchers. It also builds a timeline of conference and
workshop submission deadlines. We envision TweeNLP to function as a collective
memory unit for the NLP community by integrating the tweets pertaining to
research papers with the NLPExplorer scientific literature search engine. The
current system is hosted at http://nlpexplorer.org/twitter/CFP .
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