Hayes Brett K, Ngo Jeremy, Hawkins Guy E, Newell Ben R
School of Psychology, University of New South Wales, Sydney, NSW, 2052, Australia.
School of Psychology, University of Newcastle, University Dr, Callaghan, NSW, 2308, Australia.
Mem Cognit. 2018 Jan;46(1):112-131. doi: 10.3758/s13421-017-0750-z.
Three studies reexamined the claim that clarifying the causal origin of key statistics can increase normative performance on Bayesian problems involving judgment under uncertainty. Experiments 1 and 2 found that causal explanation did not increase the rate of normative solutions. However, certain types of causal explanation did lead to a reduction in the magnitude of errors in probability estimation. This effect was most pronounced when problem statistics were expressed in percentage formats. Experiment 3 used process-tracing methods to examine the impact of causal explanation of false positives on solution strategies. Changes in probability estimation following causal explanation were the result of a mixture of individual reasoning strategies, including non-Bayesian mechanisms, such as increased attention to explained statistics and approximations of subcomponents of Bayes' rule. The results show that although causal explanation of statistics can affect the way that a problem is mentally represented, this does not necessarily lead to an increased rate of normative responding.
三项研究重新审视了这一观点,即阐明关键统计数据的因果起源可以提高在涉及不确定性判断的贝叶斯问题上的规范表现。实验1和实验2发现,因果解释并没有提高规范解决方案的比例。然而,某些类型的因果解释确实导致概率估计误差的幅度有所降低。当问题统计数据以百分比形式表示时,这种效果最为明显。实验3使用过程追踪方法来检验对误报的因果解释对解决策略的影响。因果解释后概率估计的变化是多种个体推理策略混合的结果,包括非贝叶斯机制,如对已解释统计数据的更多关注和贝叶斯规则子成分的近似。结果表明,尽管对统计数据的因果解释会影响对问题的心理表征方式,但这不一定会导致规范反应率的提高。