Meder Björn, Hagmayer York, Waldmann Michael R
University of Göttingen, Göttingen, Germany.
Mem Cognit. 2009 Apr;37(3):249-64. doi: 10.3758/MC.37.3.249.
Recent studies have shown that people have the capacity to derive interventional predictions for previously unseen actions from observational knowledge, a finding that challenges associative theories of causal learning and reasoning (e.g., Meder, Hagmayer, & Waldmann, 2008). Although some researchers have claimed that such inferences are based mainly on qualitative reasoning about the structure of a causal system (e.g., Sloman, 2005), we propose that people use both the causal structure and its parameters for their inferences. We here employ an observational trial-by-trial learning paradigm to test this prediction. In Experiment 1, the causal strength of the links within a given causal model was varied, whereas in Experiment 2, base rate information was manipulated while keeping the structure of the model constant. The results show that learners' causal judgments were strongly affected by the observed learning data despite being presented with identical hypotheses about causal structure. The findings show furthermore that participants correctly distinguished between observations and hypothetical interventions. However, they did not adequately differentiate between hypothetical and counterfactual interventions.
最近的研究表明,人们能够从观察到的知识中得出对以前未见过的行为的干预预测,这一发现挑战了因果学习和推理的联想理论(例如,Meder、Hagmayer和Waldmann,2008)。尽管一些研究人员声称,这种推断主要基于对因果系统结构的定性推理(例如,Sloman,2005),但我们认为人们在推断中同时使用了因果结构及其参数。我们在此采用观察性逐次试验学习范式来检验这一预测。在实验1中,给定因果模型内链接的因果强度有所变化,而在实验2中,在保持模型结构不变的同时操纵了基础比率信息。结果表明,尽管学习者面对的是关于因果结构的相同假设,但他们的因果判断受到观察到的学习数据的强烈影响。此外,研究结果表明参与者能够正确区分观察和假设干预。然而,他们没有充分区分假设干预和反事实干预。