How do people actively learn to learn? That is, how and when do people choose actions that facilitate long-term learning and choosing future actions that are more informative? We explore these questions in the domain of active causal learning. We propose a hierarchical Bayesian model that goes beyond past models by predicting that people pursue information not only about the causal relationship at hand but also about causal overhypotheses$\unicode{x2014}$abstract beliefs about causal relationships that span multiple situations and constrain how we learn the specifics in each situation. In two active "blicket detector" experiments with 14 between-subjects manipulations, our model was supported by both qualitative trends in participant behavior and an individual-differences-based model comparison. Our results suggest when there are abstract similarities across active causal learning problems, people readily learn and transfer overhypotheses about these similarities. Moreover, people exploit these overhypotheses to facilitate long-term active learning.
翻译:人们如何积极学习? 也就是说,人们如何以及何时选择有助于长期学习和选择未来更加信息化的行动?我们在积极因果学习领域探讨这些问题。我们提出一种超越以往模式的等级贝叶斯模式,方法是预测人们不仅在寻找有关因果关系的信息,而且在寻找关于因果关系的信息时,不仅追求有关因果过度假设$unicode{x2014}$exctract 的信念,这种因果关系跨越多种情况,限制我们如何了解每个情况的具体细节。在两次以14个对象之间操纵进行的积极“blicket探测器”实验中,我们的模式得到了参与者行为的质量趋势以及基于个人差异的模式比较的支持。我们的结果表明,当积极因果学习问题存在抽象的相似之处时,人们可以随时学习和转移关于这些相似之处的过度假说。此外,人们利用这些过度的假说来便利长期积极学习。