Department of Psychology, Uppsala University, Uppsala, Sweden.
J Exp Psychol Learn Mem Cogn. 2013 May;39(3):782-800. doi: 10.1037/a0029670. Epub 2012 Aug 20.
The capacity of short-term memory is a key constraint when people make online judgments requiring them to rely on samples retrieved from memory (e.g., Dougherty & Hunter, 2003). In this article, the authors compare 2 accounts of how people use knowledge of statistical distributions to make point estimates: either by retrieving precomputed large-sample representations or by retrieving small samples of similar observations post hoc at the time of judgment, as constrained by short-term memory capacity (the naïve sampling model: Juslin, Winman, & Hansson, 2007). Results from four experiments support the predictions by the naïve sampling model, including that participants sometimes guess values that they, when probed, demonstrably know have the lowest probability of occurring. Experiment 1 also demonstrated the operations of an unpredicted recognition-based inference. Computational modeling also incorporating this process demonstrated that the data from all 4 experiments were better predicted by assuming a post hoc sampling process constrained by short-term memory capacity than by assuming abstraction of large-sample representations of the distribution.
当人们进行需要依赖记忆中检索到的样本(例如,Dougherty & Hunter,2003)来做出在线判断时,短期记忆能力是一个关键限制。在本文中,作者比较了两种解释人们如何使用统计分布知识进行点估计的方法:一种是通过检索预先计算的大样本表示,另一种是在判断时根据短期记忆能力事后检索相似观察的小样本(天真采样模型:Juslin、Winman 和 Hansson,2007)。四项实验的结果支持天真采样模型的预测,包括参与者有时会猜测他们显然知道出现概率最低的值。实验 1 还证明了一种未预测的基于识别的推理的运作。同时纳入这一过程的计算建模也表明,与假设抽象分布的大样本表示相比,假设由短期记忆能力约束的事后抽样过程可以更好地预测所有 4 项实验的数据。