Khemlani Sangeet S, Lotstein Max, Johnson-Laird Philip N
Navy Center for Applied Research in Artificial Intelligence, Naval Research Laboratory.
Center for Cognitive Science, University of Freiburg.
Cogn Sci. 2015 Aug;39(6):1216-58. doi: 10.1111/cogs.12193. Epub 2014 Nov 3.
We describe a dual-process theory of how individuals estimate the probabilities of unique events, such as Hillary Clinton becoming U.S. President. It postulates that uncertainty is a guide to improbability. In its computer implementation, an intuitive system 1 simulates evidence in mental models and forms analog non-numerical representations of the magnitude of degrees of belief. This system has minimal computational power and combines evidence using a small repertoire of primitive operations. It resolves the uncertainty of divergent evidence for single events, for conjunctions of events, and for inclusive disjunctions of events, by taking a primitive average of non-numerical probabilities. It computes conditional probabilities in a tractable way, treating the given event as evidence that may be relevant to the probability of the dependent event. A deliberative system 2 maps the resulting representations into numerical probabilities. With access to working memory, it carries out arithmetical operations in combining numerical estimates. Experiments corroborated the theory's predictions. Participants concurred in estimates of real possibilities. They violated the complete joint probability distribution in the predicted ways, when they made estimates about conjunctions: P(A), P(B), P(A and B), disjunctions: P(A), P(B), P(A or B or both), and conditional probabilities P(A), P(B), P(B|A). They were faster to estimate the probabilities of compound propositions when they had already estimated the probabilities of each of their components. We discuss the implications of these results for theories of probabilistic reasoning.
我们描述了一种关于个体如何估计独特事件概率的双过程理论,比如希拉里·克林顿成为美国总统的概率。该理论假定不确定性是不可能性的指南。在其计算机实现中,直观的系统1在心理模型中模拟证据,并形成信念程度大小的类似非数值表征。这个系统的计算能力极小,且使用一小套基本操作来整合证据。它通过对非数值概率取基本平均值,解决单一事件、事件合取以及事件相容析取的不同证据的不确定性。它以一种易于处理的方式计算条件概率,将给定事件视为可能与依存事件概率相关的证据。深思熟虑的系统2将所得表征映射为数值概率。借助工作记忆,它在组合数值估计时进行算术运算。实验证实了该理论的预测。参与者在对实际可能性的估计上达成一致。当他们对合取(P(A)、P(B)、P(A且B))、析取(P(A)、P(B)、P(A或B或两者))以及条件概率(P(A)、P(B)、P(B|A))进行估计时,他们以预测的方式违反了完全联合概率分布。当他们已经估计了复合命题各组成部分的概率时,他们能更快地估计复合命题的概率。我们讨论了这些结果对概率推理理论的启示。