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Cognitive shortcuts in causal inference

机译:因果推理中的认知捷径

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The paper explores the idea that causality-based probability judgments are determined by two competing drives: one towards veridicality and one towards effort reduction. Participants were taught the causal structure of novel categories and asked to make predictive and diagnostic probability judgments about the features of category exemplars. We found that participants violated the predictions of a normative causal Bayesian network model because they ignored relevant variables (Experiments 1-3) and because they failed to integrate over hidden variables (Experiment 2). When the task was made easier by stating whether alternative causes were present or absent as opposed to uncertain, judgments approximated the normative predictions (Experiment 3). We conclude that augmenting the popular causal Bayes net computational framework with cognitive shortcuts that reduce processing demands can provide a more complete account of causal inference.
机译:本文探讨了基于因果关系的概率判断是由两个相互竞争的驱动力决定的想法:一个趋向于垂直性,另一个趋向于减少工作量。参与者被告知新颖类别的因果结构,并被要求对类别范例的特征做出预测和诊断概率判断。我们发现参与者违反了规范因果贝叶斯网络模型的预测,因为他们忽略了相关变量(实验1-3),并且因为他们未能对隐藏变量进行积分(实验2)。当通过说明是否存在替代原因(而不是不确定因素)使任务变得更加容易时,判断就接近了规范性预测(实验3)。我们得出结论,用减少处理需求的认知捷径来增强流行的因果贝叶斯网络计算框架可以提供因果推断的更完整说明。

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