Department of Psychology, Center for Brain, Biology & Behavior, University of Nebraska-Lincoln, B83 East Stadium, Lincoln, NE, 68588, USA.
Department of Computer Science and Engineering, University of Nebraska-Lincoln, 122E Avery Hall, Lincoln, NE, 68588, USA.
Psychon Bull Rev. 2018 Apr;25(2):627-635. doi: 10.3758/s13423-017-1398-1.
Similarity models of intertemporal choice are heuristics that choose based on similarity judgments of the reward amounts and time delays. Yet, we do not know how these judgments are made. Here, we use machine-learning algorithms to assess what factors predict similarity judgments and whether decision trees capture the judgment outcomes and process. We find that combining small and large values into numerical differences and ratios and arranging them in tree-like structures can predict both similarity judgments and response times. Our results suggest that we can use machine learning to not only model decision outcomes but also model how decisions are made. Revealing how people make these important judgments may be useful in developing interventions to help them make better decisions.
跨期选择的相似性模型是一种基于对奖励金额和时间延迟的相似性判断来进行选择的启发式方法。然而,我们不知道这些判断是如何做出的。在这里,我们使用机器学习算法来评估哪些因素可以预测相似性判断,以及决策树是否可以捕捉到判断结果和过程。我们发现,将小值和大值组合成数值差异和比值,并将它们排列成树状结构,可以预测相似性判断和反应时间。我们的结果表明,我们不仅可以使用机器学习来建模决策结果,还可以建模决策是如何做出的。揭示人们如何做出这些重要的判断可能有助于开发干预措施,以帮助他们做出更好的决策。