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非贝叶斯推理:因果结构胜过相关性。

Non-bayesian inference: causal structure trumps correlation.

机构信息

Laboratoire CLLE-LTC, Université de Toulouse, Pittsburgh.

出版信息

Cogn Sci. 2012 Sep-Oct;36(7):1178-203. doi: 10.1111/j.1551-6709.2012.01262.x. Epub 2012 Jun 26.

Abstract

The study tests the hypothesis that conditional probability judgments can be influenced by causal links between the target event and the evidence even when the statistical relations among variables are held constant. Three experiments varied the causal structure relating three variables and found that (a) the target event was perceived as more probable when it was linked to evidence by a causal chain than when both variables shared a common cause; (b) predictive chains in which evidence is a cause of the hypothesis gave rise to higher judgments than diagnostic chains in which evidence is an effect of the hypothesis; and (c) direct chains gave rise to higher judgments than indirect chains. A Bayesian learning model was applied to our data but failed to explain them. An explanation-based hypothesis stating that statistical information will affect judgments only to the extent that it changes beliefs about causal structure is consistent with the results.

摘要

该研究检验了这样一个假设,即即使在变量之间的统计关系保持不变的情况下,条件概率判断也可以受到目标事件与证据之间因果关系的影响。三个实验改变了与三个变量相关的因果结构,发现(a)当目标事件通过因果链与证据联系起来时,它比两个变量共享一个共同原因时更有可能被感知;(b)预测链中证据是假设的原因,比诊断链中证据是假设的结果更能引起更高的判断;(c)直接链比间接链引起更高的判断。一个贝叶斯学习模型被应用于我们的数据,但未能解释它们。一个基于解释的假设指出,统计信息只有在改变关于因果结构的信念的程度上才会影响判断,这与结果是一致的。

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