Department of Computational Sciences, Wigner Research Centre for Physics, Budapest, Hungary.
Department of Cognitive Science, Faculty of Natural Sciences, Budapest University of Technology and Economics, Műegyetem rkp. 3., H-1111 Budapest, Hungary.
PLoS Comput Biol. 2022 Jun 22;18(6):e1010182. doi: 10.1371/journal.pcbi.1010182. eCollection 2022 Jun.
Internal models capture the regularities of the environment and are central to understanding how humans adapt to environmental statistics. In general, the correct internal model is unknown to observers, instead they rely on an approximate model that is continually adapted throughout learning. However, experimenters assume an ideal observer model, which captures stimulus structure but ignores the diverging hypotheses that humans form during learning. We combine non-parametric Bayesian methods and probabilistic programming to infer rich and dynamic individualised internal models from response times. We demonstrate that the approach is capable of characterizing the discrepancy between the internal model maintained by individuals and the ideal observer model and to track the evolution of the contribution of the ideal observer model to the internal model throughout training. In particular, in an implicit visuomotor sequence learning task the identified discrepancy revealed an inductive bias that was consistent across individuals but varied in strength and persistence.
内部模型捕捉环境的规律,是理解人类如何适应环境统计的核心。一般来说,观察者并不知道正确的内部模型,而是依赖于在学习过程中不断适应的近似模型。然而,实验者假设了一种理想的观察者模型,该模型捕捉刺激结构,但忽略了人类在学习过程中形成的分歧假设。我们结合非参数贝叶斯方法和概率编程,从反应时间推断出丰富而动态的个性化内部模型。我们证明,该方法能够描述个体所维持的内部模型与理想观察者模型之间的差异,并跟踪理想观察者模型对整个训练过程中内部模型的贡献的演变。特别是,在一个隐式视觉运动序列学习任务中,所识别的差异揭示了一种在个体之间一致但强度和持久性不同的归纳偏差。