Buchsbaum Daphna, Griffiths Thomas L, Plunkett Dillon, Gopnik Alison, Baldwin Dare
University of Toronto, Department of Psychology, 100 St. George Street, 4th Floor, Sidney Smith Hall, Toronto, ON M5S 3G3, Canada.
University of California, Berkeley, Department of Psychology, 3210 Tolman Hall # 1650, Berkeley, CA 94720-1650, USA.
Cogn Psychol. 2015 Feb;76:30-77. doi: 10.1016/j.cogpsych.2014.10.001. Epub 2014 Dec 18.
In the real world, causal variables do not come pre-identified or occur in isolation, but instead are embedded within a continuous temporal stream of events. A challenge faced by both human learners and machine learning algorithms is identifying subsequences that correspond to the appropriate variables for causal inference. A specific instance of this problem is action segmentation: dividing a sequence of observed behavior into meaningful actions, and determining which of those actions lead to effects in the world. Here we present a Bayesian analysis of how statistical and causal cues to segmentation should optimally be combined, as well as four experiments investigating human action segmentation and causal inference. We find that both people and our model are sensitive to statistical regularities and causal structure in continuous action, and are able to combine these sources of information in order to correctly infer both causal relationships and segmentation boundaries.
在现实世界中,因果变量并非预先确定或孤立出现,而是嵌入在连续的事件时间流中。人类学习者和机器学习算法都面临的一个挑战是识别与因果推断的适当变量相对应的子序列。这个问题的一个具体实例是动作分割:将观察到的行为序列划分为有意义的动作,并确定哪些动作会在现实世界中产生影响。在这里,我们提出了一种贝叶斯分析,说明分割的统计线索和因果线索应如何最佳地结合,以及四个研究人类动作分割和因果推断的实验。我们发现,人类和我们的模型都对连续动作中的统计规律和因果结构敏感,并且能够结合这些信息源来正确推断因果关系和分割边界。