The Ohio State University, Columbus, OH, USA.
Bayesian Beginnings LLC, Columbus, USA.
Cogn Affect Behav Neurosci. 2023 Jun;23(3):557-577. doi: 10.3758/s13415-023-01099-z. Epub 2023 Jun 8.
When making decisions based on probabilistic outcomes, people guide their behavior using knowledge gathered through both indirect descriptions and direct experience. Paradoxically, how people obtain information significantly impacts apparent preferences. A ubiquitous example is the description-experience gap: individuals seemingly overweight low probability events when probabilities are described yet underweight them when probabilities must be experienced firsthand. A leading explanation for this fundamental gap in decision-making is that probabilities are weighted differently when learned through description relative to experience, yet a formal theoretical account of the mechanism responsible for such weighting differences remains elusive. We demonstrate how various learning and memory retention models incorporating neuroscientifically motivated learning mechanisms can explain why probability weighting and valuation parameters often are found to vary across description and experience. In a simulation study, we show how learning through experience can lead to systematically biased estimates of probability weighting when using a traditional cumulative prospect theory model. We then use hierarchical Bayesian modeling and Bayesian model comparison to show how various learning and memory retention models capture participants' behavior over and above changes in outcome valuation and probability weighting, accounting for description and experience-based decisions in a within-subject experiment. We conclude with a discussion of how substantive models of psychological processes can lead to insights that heuristic statistical models fail to capture.
当基于概率结果做出决策时,人们会利用通过间接描述和直接经验收集到的知识来指导自己的行为。矛盾的是,人们获取信息的方式会显著影响明显的偏好。一个普遍的例子是描述-体验差距:当概率被描述时,个体似乎会低估低概率事件,而当概率必须亲自体验时,又会低估它们。对于决策中的这种基本差距,一个主要的解释是,当通过描述相对于经验来学习概率时,概率的权重会有所不同,但对于负责这种权重差异的机制的正式理论解释仍然难以捉摸。我们展示了各种学习和记忆保留模型,其中包含了神经科学驱动的学习机制,这些模型可以解释为什么概率加权和估值参数在描述和经验之间经常发生变化。在一项模拟研究中,我们展示了当使用传统的累积前景理论模型时,通过经验学习如何导致概率加权的系统偏差估计。然后,我们使用分层贝叶斯建模和贝叶斯模型比较来展示各种学习和记忆保留模型如何在一项受试者内实验中超越结果估值和概率加权的变化来捕捉参与者的行为,从而解释描述和基于经验的决策。最后,我们讨论了心理过程的实质性模型如何能够产生启发式统计模型无法捕捉到的见解。