Department of Psychology, New York University.
Cogn Sci. 2020 May;44(5):e12839. doi: 10.1111/cogs.12839.
How do we make causal judgments? Many studies have demonstrated that people are capable causal reasoners, achieving success on tasks from reasoning to categorization to interventions. However, less is known about the mental processes used to achieve such sophisticated judgments. We propose a new process model-the mutation sampler-that models causal judgments as based on a sample of possible states of the causal system generated using the Metropolis-Hastings sampling algorithm. Across a diverse array of tasks and conditions encompassing over 1,700 participants, we found that our model provided a consistently closer fit to participant judgments than standard causal graphical models. In particular, we found that the biases introduced by mutation sampling accounted for people's consistent, predictable errors that the normative model by definition could not. Moreover, using a novel experimental methodology, we found that those biases appeared in the samples that participants explicitly judged to be representative of a causal system. We conclude by advocating sampling methods as plausible process-level accounts of the computations specified by the causal graphical model framework and highlight opportunities for future research to identify not just what reasoners compute when drawing causal inferences, but also how they compute it.
我们如何做出因果判断?许多研究表明,人们是有能力进行因果推理的,能够成功完成从推理到分类再到干预的任务。然而,对于实现这种复杂判断所使用的心理过程知之甚少。我们提出了一种新的过程模型——突变采样器,该模型将因果判断建模为基于使用 Metropolis-Hastings 采样算法生成的因果系统可能状态的样本。在涵盖 1700 多名参与者的各种任务和条件下,我们发现我们的模型比标准因果图形模型更一致地符合参与者的判断。具体来说,我们发现突变采样引入的偏差解释了人们一致的、可预测的错误,而规范模型根据定义无法解释这些错误。此外,使用一种新颖的实验方法,我们发现这些偏差出现在参与者明确判断为代表因果系统的样本中。最后,我们主张采样方法是因果图形模型框架指定的计算的合理过程级解释,并强调未来研究的机会,不仅要确定推理者在进行因果推理时计算什么,还要确定他们如何计算。