Analogies have been central to creative problem-solving throughout the history of science and technology. As the number of scientific papers continues to increase exponentially, there is a growing opportunity for finding diverse solutions to existing problems. However, realizing this potential requires the development of a means for searching through a large corpus that goes beyond surface matches and simple keywords. Here we contribute the first end-to-end system for analogical search on scientific papers and evaluate its effectiveness with scientists' own problems. Using a human-in-the-loop AI system as a probe we find that our system facilitates creative ideation, and that ideation success is mediated by an intermediate level of matching on the problem abstraction (i.e., high versus low). We also demonstrate a fully automated AI search engine that achieves a similar accuracy with the human-in-the-loop system. We conclude with design implications for enabling automated analogical inspiration engines to accelerate scientific innovation.
翻译:在整个科技史上,在创造性地解决问题方面,分析是核心。随着科学论文数量继续成倍增长,寻找解决现有问题的不同办法的机会日益增大。然而,实现这一潜力需要开发一种手段,通过超越表面匹配和简单关键词的大型搜索体进行搜索。我们在这里为科学论文的模拟搜索提供第一个端对端系统,并评估其与科学家自身问题的有效性。我们利用人到端的AI系统作为探测器发现,我们的系统促进了创造性的思维,而理念的成功则通过对问题抽象化(即高低)的中间匹配来调节。我们还展示了完全自动化的AI搜索引擎,其精确度与“人到流”系统相近。我们最后提出了使自动模拟灵感引擎能够加速科学创新的设计影响。