Department of Psychology, University of Southern California, Los Angeles, CA, USA.
Department of Psychology, and Princeton Neuroscience Institute, Princeton University, Princeton, NJ, USA.
Nat Commun. 2024 Oct 21;15(1):9073. doi: 10.1038/s41467-024-53459-z.
Making adaptive decisions requires predicting outcomes, and this in turn requires adapting to uncertain environments. This study explores computational challenges in distinguishing two types of noise influencing predictions: volatility and stochasticity. Volatility refers to diffusion noise in latent causes, requiring a higher learning rate, while stochasticity introduces moment-to-moment observation noise and reduces learning rate. Dissociating these effects is challenging as both increase the variance of observations. Previous research examined these factors mostly separately, but it remains unclear whether and how humans dissociate them when they are played off against one another. In two large-scale experiments, through a behavioral prediction task and computational modeling, we report evidence of humans dissociating volatility and stochasticity solely based on their observations. We observed contrasting effects of volatility and stochasticity on learning rates, consistent with statistical principles. These results are consistent with a computational model that estimates volatility and stochasticity by balancing their dueling effects.
做出适应性决策需要预测结果,而这反过来又需要适应不确定的环境。本研究探讨了在区分影响预测的两种噪声类型方面的计算挑战:波动性和随机性。波动性是指潜在原因中的扩散噪声,需要更高的学习率,而随机性则引入了瞬间的观察噪声并降低了学习率。区分这些影响是具有挑战性的,因为它们都会增加观察的方差。以前的研究主要分别研究了这些因素,但尚不清楚人类在相互竞争时是否以及如何将它们区分开来。在两项大规模实验中,我们通过行为预测任务和计算建模,报告了人类仅根据观察结果区分波动性和随机性的证据。我们观察到波动性和随机性对学习率的影响相反,这与统计原理一致。这些结果与一种计算模型一致,该模型通过平衡它们的竞争效应来估计波动性和随机性。