Pop culture is an important aspect of communication. On social media people often post pop culture reference images that connect an event, product or other entity to a pop culture domain. Creating these images is a creative challenge that requires finding a conceptual connection between the users' topic and a pop culture domain. In cognitive theory, this task is called conceptual blending. We present a system called PopBlends that automatically suggests conceptual blends. The system explores three approaches that involve both traditional knowledge extraction methods and large language models. Our annotation study shows that all three methods provide connections with similar accuracy, but with very different characteristics. Our user study shows that people found twice as many blend suggestions as they did without the system, and with half the mental demand. We discuss the advantages of combining large language models with knowledge bases for supporting divergent and convergent thinking.
翻译:流行文化是交流的一个重要方面。在社交媒体上,人们常常张贴将事件、产品或其他实体与流行文化领域联系起来的流行文化参考图像。创建这些图像是一项创造性的挑战,需要找到用户主题与流行文化领域之间的概念联系。在认知理论中,这项任务被称为概念混合。我们提出了一个称为PopBlends的系统,它自动建议概念混合。这个系统探索了三种方法,既包括传统知识提取方法,也包括大型语言模式。我们的说明研究表明,所有三种方法都提供了相似的准确性,但具有非常不同的特征。我们的用户研究表明,人们找到的混合建议比没有系统的人多一倍,还有一半的精神需求。我们讨论了将大型语言模式与知识基础相结合,以支持差异和融合思维的知识基础的优势。