Binz Marcel, Gershman Samuel J, Schulz Eric, Endres Dominik
Department of Psychology.
Computational Principles of Intelligence Lab.
Psychol Rev. 2022 Oct;129(5):1042-1077. doi: 10.1037/rev0000330. Epub 2022 Jan 6.
Numerous researchers have put forward heuristics as models of human decision-making. However, where such heuristics come from is still a topic of ongoing debate. In this work, we propose a novel computational model that advances our understanding of heuristic decision-making by explaining how different heuristics are discovered and how they are selected. This model-called bounded meta-learned inference (BMI)-is based on the idea that people make environment-specific inferences about which strategies to use while being efficient in terms of how they use computational resources. We show that our approach discovers two previously suggested types of heuristics-one reason decision-making and equal weighting-in specific environments. Furthermore, the model provides clear and precise predictions about when each heuristic should be applied: Knowing the correct ranking of attributes leads to one reason decision-making, knowing the directions of the attributes leads to equal weighting, and not knowing about either leads to strategies that use weighted combinations of multiple attributes. In three empirical paired comparison studies with continuous features, we verify predictions of our theory and show that it captures several characteristics of human decision-making not explained by alternative theories. (PsycInfo Database Record (c) 2022 APA, all rights reserved).
众多研究者已提出启发式方法作为人类决策的模型。然而,此类启发式方法的来源仍是一个仍在争论的话题。在这项研究中,我们提出了一种新颖的计算模型,通过解释不同的启发式方法是如何被发现以及如何被选择,来推进我们对启发式决策的理解。这个模型——称为有界元学习推理(BMI)——基于这样一种观点,即人们在对使用何种策略进行特定于环境的推理时,在如何使用计算资源方面是高效的。我们表明,我们的方法在特定环境中发现了两种先前提出的启发式方法类型——单一理由决策和等权重。此外,该模型对每种启发式方法何时应被应用提供了清晰而精确的预测:知道属性的正确排序会导致单一理由决策,知道属性的方向会导致等权重,而对两者都不知道则会导致使用多个属性的加权组合的策略。在三项针对连续特征的实证配对比较研究中,我们验证了我们理论的预测,并表明它捕捉到了替代理论未解释的人类决策的几个特征。(PsycInfo数据库记录(c)2022美国心理学会,保留所有权利)