arXiv Open Access 2022

SciTweets -- A Dataset and Annotation Framework for Detecting Scientific Online Discourse

Salim Hafid Sebastian Schellhammer Sandra Bringay Konstantin Todorov Stefan Dietze
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Abstrak

Scientific topics, claims and resources are increasingly debated as part of online discourse, where prominent examples include discourse related to COVID-19 or climate change. This has led to both significant societal impact and increased interest in scientific online discourse from various disciplines. For instance, communication studies aim at a deeper understanding of biases, quality or spreading pattern of scientific information whereas computational methods have been proposed to extract, classify or verify scientific claims using NLP and IR techniques. However, research across disciplines currently suffers from both a lack of robust definitions of the various forms of science-relatedness as well as appropriate ground truth data for distinguishing them. In this work, we contribute (a) an annotation framework and corresponding definitions for different forms of scientific relatedness of online discourse in Tweets, (b) an expert-annotated dataset of 1261 tweets obtained through our labeling framework reaching an average Fleiss Kappa $κ$ of 0.63, (c) a multi-label classifier trained on our data able to detect science-relatedness with 89% F1 and also able to detect distinct forms of scientific knowledge (claims, references). With this work we aim to lay the foundation for developing and evaluating robust methods for analysing science as part of large-scale online discourse.

Topik & Kata Kunci

Penulis (5)

S

Salim Hafid

S

Sebastian Schellhammer

S

Sandra Bringay

K

Konstantin Todorov

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Stefan Dietze

Format Sitasi

Hafid, S., Schellhammer, S., Bringay, S., Todorov, K., Dietze, S. (2022). SciTweets -- A Dataset and Annotation Framework for Detecting Scientific Online Discourse. https://arxiv.org/abs/2206.07360

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Informasi Jurnal
Tahun Terbit
2022
Bahasa
en
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arXiv
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Open Access ✓