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超越马尔可夫模型:因果推理中独立性违背的考量

Beyond Markov: Accounting for independence violations in causal reasoning.

作者信息

Rehder Bob

机构信息

Department of Psychology, New York University, United States.

出版信息

Cogn Psychol. 2018 Jun;103:42-84. doi: 10.1016/j.cogpsych.2018.01.003. Epub 2018 Mar 6.

DOI:10.1016/j.cogpsych.2018.01.003
PMID:29522980
Abstract

Although many theories of causal cognition are based on causal graphical models, a key property of such models-the independence relations stipulated by the Markov condition-is routinely violated by human reasoners. This article presents three new accounts of those independence violations, accounts that share the assumption that people's understanding of the correlational structure of data generated from a causal graph differs from that stipulated by causal graphical model framework. To distinguish these models, experiments assessed how people reason with causal graphs that are larger than those tested in previous studies. A traditional common cause network (Y←X→Y) was extended so that the effects themselves had effects (Z←Y←X→Y→Z). A traditional common effect network (Y→X←Y) was extended so that the causes themselves had causes (Z→Y→X←Y←Z). Subjects' inferences were most consistent with the beta-Q model in which consistent states of the world-those in which variables are either mostly all present or mostly all absent-are viewed as more probable than stipulated by the causal graphical model framework. Substantial variability in subjects' inferences was also observed, with the result that substantial minorities of subjects were best fit by one of the other models (the dual prototype or a leaky gate models). The discrepancy between normative and human causal cognition stipulated by these models is foundational in the sense that they locate the error not in people's causal reasoning but rather in their causal representations. As a result, they are applicable to any cognitive theory grounded in causal graphical models, including theories of analogy, learning, explanation, categorization, decision-making, and counterfactual reasoning. Preliminary evidence that independence violations indeed generalize to other judgment types is presented.

摘要

尽管许多因果认知理论都基于因果图模型,但人类推理者常常违反这类模型的一个关键属性——马尔可夫条件所规定的独立性关系。本文提出了三种关于这些独立性违反情况的新解释,这些解释都有一个共同的假设,即人们对由因果图生成的数据的相关结构的理解不同于因果图模型框架所规定的理解。为了区分这些模型,实验评估了人们如何对比以往研究中测试的更大的因果图进行推理。一个传统的共同原因网络(Y←X→Y)被扩展,使得这些效应本身又有了效应(Z←Y←X→Y→Z)。一个传统的共同效应网络(Y→X←Y)被扩展,使得这些原因本身又有了原因(Z→Y→X←Y←Z)。受试者的推理与β-Q模型最为一致,在该模型中,世界的一致状态——即变量要么大多都存在要么大多都不存在的状态——被认为比因果图模型框架所规定的更有可能。在受试者的推理中也观察到了很大的变异性,结果是相当一部分少数受试者最符合其他模型之一(双重原型模型或泄漏门模型)。这些模型所规定的规范因果认知与人类因果认知之间的差异是根本性的,因为它们将错误定位在人们的因果表征而非因果推理中。因此,它们适用于任何基于因果图模型的认知理论,包括类比、学习、解释、分类、决策和反事实推理等理论。文中还给出了独立性违反确实能推广到其他判断类型的初步证据。

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Probabilistic causal reasoning under time pressure.时间压力下的概率因果推理。
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