Beckman Institute for Advanced Science and Technology, University of Illinois Urbana-Champaign.
Department of Psychology, University of Illinois Urbana-Champaign.
Cogn Sci. 2024 Nov;48(11):e70010. doi: 10.1111/cogs.70010.
Moral rules come with exceptions, and moral judgments come with uncertainty. For instance, stealing is wrong and generally punished. Yet, it could be the case that the thief is stealing food for their family. Such information about the thief's context could flip admonishment to praise. To varying degrees, this type of uncertainty regarding the context of another person's behavior is ever-present in moral judgment. Hence, we propose a model of how people evaluate others' behavior: We argue that individuals principally judge the righteousness of another person's behavior by assessing the likelihood that they would act the same way if they were in the person's shoes. That is, if you see another person steal, you will consider the contexts where you too would steal and assess the likelihood that any of these contexts are true, given the available information. This idea can be formalized as a Bayesian model that treats moral judgment as probabilistic reasoning. We tested this model across four studies (N = 601) involving either fictional moral vignettes or economic games. The studies yielded converging evidence showing that the proposed model better predicts moral judgment under uncertainty than traditional theories that emphasize social norms or perceived harm/utility. Overall, the present studies support a new model of moral judgment with the potential to unite research on social judgment, decision-making, and probabilistic reasoning. Beyond this specific model, the present studies also more generally speak to how individuals parse uncertainty by integrating across different possibilities.
道德规则有例外,道德判断也存在不确定性。例如,偷窃是错误的,通常会受到惩罚。然而,也有可能小偷是为了家人而偷食物。关于小偷背景的此类信息可能会将谴责变为赞扬。在不同程度上,这种关于他人行为背景的不确定性在道德判断中始终存在。因此,我们提出了一种人们如何评价他人行为的模型:我们认为,个体主要通过评估自己在他人处境下是否会采取同样行为的可能性来判断他人行为的正义性。也就是说,如果您看到另一个人偷窃,您会考虑自己在哪些情况下也会偷窃,并根据现有信息评估这些情况发生的可能性。这个想法可以形式化为一个贝叶斯模型,将道德判断视为概率推理。我们在四个涉及虚构道德情境或经济游戏的研究(N=601)中检验了这个模型。这些研究提供了一致的证据,表明与强调社会规范或感知到的伤害/效用的传统理论相比,所提出的模型能更好地预测不确定性下的道德判断。总的来说,这些研究支持了一种新的道德判断模型,该模型有可能将社会判断、决策和概率推理的研究结合起来。除了这个具体的模型之外,这些研究还更普遍地说明了个体如何通过整合不同的可能性来解析不确定性。