Figural analogy problems have long been a widely used format in human intelligence tests. In the past four decades, more and more research has investigated automatic item generation for figural analogy problems, i.e., algorithmic approaches for systematically and automatically creating such problems. In cognitive science and psychometrics, this research can deepen our understandings of human analogical ability and psychometric properties of figural analogies. With the recent development of data-driven AI models for reasoning about figural analogies, the territory of automatic item generation of figural analogies has further expanded. This expansion brings new challenges as well as opportunities, which demand reflection on previous item generation research and planning future studies. This paper reviews the important works of automatic item generation of figural analogies for both human intelligence tests and data-driven AI models. From an interdisciplinary perspective, the principles and technical details of these works are analyzed and compared, and desiderata for future research are suggested.
翻译:在过去40年中,越来越多的研究调查了因非数字类比问题而自动产生物品的问题,即系统、自动制造这类问题的算法方法。在认知科学和心理测量中,这种研究可以加深我们对人类模拟能力和非数字类比精神测量特性的理解。随着数据驱动的模拟模型的最近发展,用于模拟模拟推理的人工智能模型,自动生成非数字类比的领域进一步扩大了。这种扩展带来了新的挑战和机会,要求反思先前的项目生成研究和规划未来研究。本文回顾了自动生成人类情报测试和数据驱动的AI模型的假冒类比的重要作品。从跨学科角度分析并比较了这些作品的原则和技术细节,并提出了未来研究的侧面。