Causal reasoning is crucial to people’s decision making in probabilistic environments. It may rely directly on data about covariation between varia'/> Betting on transitivity in probabilistic causal chains
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Betting on transitivity in probabilistic causal chains

机译:在概率因果链中投注过渡

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AbstractCausal reasoning is crucial to people’s decision making in probabilistic environments. It may rely directly on data about covariation between variables (correspondence) or on inferences based on reasonable constraints if larger causal models are constructed based on local relations (coherence). For causal chains an often assumed constraint is transitivity. For probabilistic causal relations, mismatches between such transitive inferences and direct empirical evidence may lead to distortions of empirical evidence. Previous work has shown that people may use the generative local causal relationsA?→?BandB?→?Cto infer a positive indirect relation between eventsAandC, despite data showing that these events are actually independent (von Sydow et al. in Proceedings of the thirty-first annual conference of the cognitive science society. Cognitive Science Society, Austin, 2009, Proceedings of the 32nd annual conference of the cognitive science society. Cognitive Science Society, Austin, 2010, Mem Cogn 44(3):469–487, 2016). Here we used a sequential learning scenario to investigate how transitive reasoning in intransitive situations with negatively related distal events may relate to betting behavior. In three experiments participants bet as if they were influenced by a transitivity assumption, even when the data strongly contradicted transitivity.]]>
机译:<![cdata [<标题>抽象 ara id =“par1”>因果推理对于人们在概率环境中的决策方面至关重要。它可以直接依赖于有关变量之间的协变的数据(<重点类型=“斜体”>对应)或基于合理约束的推断,如果基于本地关系构建较大的因果模型(<重点类型=“斜体” >相容)。对于因果链,通常假设的约束是传递性。对于概率的因果关系,这种递推和直接经验证据之间的不匹配可能导致扭曲的经验证据。以前的工作表明,人们可以使用生成的本地因果关系<重点类型=“斜体”> a ?→?<重点类型=“斜体”> b 和<重点类型=“斜体” > B ?→<强调类型=“斜体”> c 推断事件<重点类型=“斜体”> a 和<重点类型=“斜体之间的正间间接关系“> C 尽管数据显示这些事件实际上是独立的(von sydow等人。在认知科学学会的第三十一年度会议上的诉讼程序中。认知科学协会,奥斯汀,2009年,第32届诉讼程序认知科学学会年会。认知科学协会,奥斯汀,2010,MEM认知44(3):469-487,2010)。在这里,我们使用了顺序学习场景来研究与否定相关的远端事件的不道而性情况如何与投注行为有关。在三个实验中,参与者赌注好像它们受到传递假设的影响,即使数据强烈矛盾的传递率。]>

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