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Measuring Correlation-to-Causation Exaggeration in Press Releases

机译:衡量新闻稿中因果关系夸张的相关性

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Press releases have an increasingly strong influence on media coverage of health research; however, they have been found to contain seriously exaggerated claims that can misinform the public and undermine public trust in science. In this study we propose an NLP approach to identify exaggerated causal claims made in health press releases that report on observational studies, which are designed to establish correlational findings, but are often exaggerated as causal. We developed a new corpus and trained models that can identify causal claims in the main statements in a press release. By comparing the claims made in a press release with the corresponding claims in the original research paper, we found that 22% of press releases made exaggerated causal claims from correlational findings in observational studies. Furthermore, universities exaggerated more often than journal publishers by a ratio of 1.5 to 1. Encouragingly, the exaggeration rate has slightly decreased over the past 10 years, despite the increase of the total number of press releases. More research is needed to understand the cause of the decreasing pattern.
机译:新闻稿对健康研究的媒体报道的影响越来越大;然而,人们发现它们包含严重夸大的说法,可能误导公众,破坏公众对科学的信任。在这项研究中,我们提出了一种NLP方法来识别在报道观察性研究的健康新闻稿中夸大的因果声称,这些观察性研究旨在建立相关发现,但往往被夸大为因果关系。我们开发了一个新的语料库和经过训练的模型,可以识别新闻稿中主要陈述中的因果关系。通过将新闻稿中的声明与原始研究论文中的相应声明进行比较,我们发现22%的新闻稿根据观察性研究中的相关发现做出了夸大的因果声明。此外,大学比期刊出版商夸大的比例为1.5:1。令人鼓舞的是,尽管新闻稿总数有所增加,但在过去10年中,夸大率略有下降。需要更多的研究来理解这种下降模式的原因。

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