SciTweets - A Dataset and Annotation Framework for Detecting Scientific Online Discourse
收藏CESSDA2023-03-11 更新2024-08-03 收录
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https://datacatalogue.cessda.eu/detail?lang=en&q=376855bcc8e37f46cd7b06efa2220f4572ed2cf04f81b5c2bce5a6519d9db1c6
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资源简介:
This repository contains an expert-annotated dataset of 1261 tweets and the corresponding annotation framework from the publication "SciTweets - A Dataset and Annotation Framework for Detecting Scientific Online Discourse" (https://arxiv.org/abs/2206.07360). The tweets are annotated with three different categories of science-relatedness: <br>
(1) Scientific knowledge (scientifically verifiable claims): Tweets that include a claim or a question that could be scientifically verified, (2) Reference to scientific knowledge: Tweets that include at least one reference to scientific knowledge (references can either be direct, e.g., DOI, title of a paper or indirect, e.g., a link to an article that includes a direct reference), and (3) Related to scientific research in general: Tweets that mention a scientific research context (e.g., mention a scientist, scientific research efforts, research findings). <br>
Further, the annotations include the annotators' confidence scores as well as labels for compound claims and ironic tweets. <br>
提供机构:
GESIS Data Archive for the Social Sciences



