Laboratoire de Physique.
Princeton Neuroscience Institute.
Psychol Rev. 2021 Oct;128(5):879-912. doi: 10.1037/rev0000276. Epub 2021 Sep 13.
To make informed decisions in natural environments that change over time, humans must update their beliefs as new observations are gathered. Studies exploring human inference as a dynamical process that unfolds in time have focused on situations in which the statistics of observations are history-independent. Yet, temporal structure is everywhere in nature and yields history-dependent observations. Do humans modify their inference processes depending on the latent temporal statistics of their observations? We investigate this question experimentally and theoretically using a change-point inference task. We show that humans adapt their inference process to fine aspects of the temporal structure in the statistics of stimuli. As such, humans behave qualitatively in a Bayesian fashion but, quantitatively, deviate away from optimality. Perhaps more importantly, humans behave suboptimally in that their responses are not deterministic, but variable. We show that this variability itself is modulated by the temporal statistics of stimuli. To elucidate the cognitive algorithm that yields this behavior, we investigate a broad array of existing and new models that characterize different sources of suboptimal deviations away from Bayesian inference. While models with "output noise" that corrupts the response-selection process are natural candidates, human behavior is best described by sampling-based inference models, in which the main ingredient is a compressed approximation of the posterior, represented through a modest set of random samples and updated over time. This result comes to complement a growing literature on sample-based representation and learning in humans. (PsycInfo Database Record (c) 2021 APA, all rights reserved).
为了在随时间变化的自然环境中做出明智的决策,人类必须在收集新的观察结果时更新他们的信念。探索人类推理作为一个随时间展开的动态过程的研究侧重于观察结果的统计数据与历史无关的情况。然而,时间结构在自然界中无处不在,并且产生依赖于历史的观察结果。人类是否会根据观察结果的潜在时间统计数据来修改他们的推理过程?我们使用变更点推理任务从实验和理论上研究这个问题。我们表明,人类会根据刺激统计数据中时间结构的细微方面来调整他们的推理过程。因此,人类在行为上是符合贝叶斯方式的,但在数量上却偏离了最优性。也许更重要的是,人类的行为是次优的,因为他们的反应不是确定性的,而是可变的。我们表明,这种可变性本身受到刺激时间统计数据的调节。为了阐明产生这种行为的认知算法,我们研究了一系列现有的和新的模型,这些模型描述了偏离贝叶斯推理的不同次优来源。虽然“输出噪声”会破坏响应选择过程的模型是自然的候选者,但人类行为最好通过基于抽样的推理模型来描述,其中主要成分是后验的压缩近似,通过一组少量的随机样本表示,并随时间更新。这一结果补充了关于人类基于抽样的表示和学习的不断增长的文献。(PsycInfo 数据库记录(c)2021 APA,保留所有权利)。