从复杂到清晰:人工智能如何提升科学家的形象和公众对科学的理解

David M Markowitz
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摘要

本文评估了使用生成式人工智能简化科学交流和提高公众对科学的理解的有效性。通过比较《美国国家科学院院刊》(PNAS)期刊论文的非专业摘要与人工智能生成的摘要,这项工作首先评估了这些摘要在语言简洁性上的差异,并在后续实验中评估了公众的看法。具体来说,研究 1a 分析了 PNAS 摘要(科学摘要)和意义陈述(非专业摘要)的简洁性特征,观察到非专业摘要在语言上确实更简洁,但效果大小差异很小。研究 1b 使用了一个大型语言模型 GPT-4 来创建基于论文摘要的意义陈述,在不进行微调的情况下,平均效应大小增加了一倍多。研究 2 通过实验证明,与撰写复杂的人类 PNAS 摘要相比,撰写简单的 GPT 摘要更容易让人对科学家产生好感(他们被认为更可信、更值得信赖,但智力较低)。最重要的是,研究 3 通过实验证明,与复杂的 PNAS 摘要相比,参与者在阅读简单的 GPT 摘要后能更好地理解科学写作。用他们自己的话说,与同一篇文章的 PNAS 摘要相比,参与者在阅读 GPT 摘要后,对科学论文的总结也更加详细和具体。人工智能具有通过简单语言启发式吸引科学界和公众参与的潜力,提倡将其纳入科学传播,以建立一个更加知情的社会。
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From complexity to clarity: How AI enhances perceptions of scientists and the public’s understanding of science
This paper evaluated the effectiveness of using generative AI to simplify science communication and enhance the public’s understanding of science. By comparing lay summaries of journal articles from PNAS, yoked to those generated by AI, this work first assessed linguistic simplicity differences across such summaries and public perceptions in follow-up experiments. Specifically, Study 1a analyzed simplicity features of PNAS abstracts (scientific summaries) and significance statements (lay summaries), observing that lay summaries were indeed linguistically simpler, but effect size differences were small. Study 1b used a large language model, GPT-4, to create significance statements based on paper abstracts and this more than doubled the average effect size without fine-tuning. Study 2 experimentally demonstrated that simply-written GPT summaries facilitated more favorable perceptions of scientists (they were perceived as more credible and trustworthy, but less intelligent) than more complexly-written human PNAS summaries. Crucially, Study 3 experimentally demonstrated that participants comprehended scientific writing better after reading simple GPT summaries compared to complex PNAS summaries. In their own words, participants also summarized scientific papers in a more detailed and concrete manner after reading GPT summaries compared to PNAS summaries of the same article. AI has the potential to engage scientific communities and the public via a simple language heuristic, advocating for its integration into scientific dissemination for a more informed society.
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