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The neurobiology of uncertainty: implications for statistical learning

机译:神经生物学的不确定性:对统计学习的启示

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摘要

The capacity for assessing the degree of uncertainty in the environment relies on estimating statistics of temporally unfolding inputs. This, in turn, allows calibration of predictive and bottom-up processing, and signalling changes in temporally unfolding environmental features. In the last decade, several studies have examined how the brain codes for and responds to input uncertainty. Initial neurobiological experiments implicated frontoparietal and hippocampal systems, based largely on paradigms that manipulated distributional features of visual stimuli. However, later work in the auditory domain pointed to different systems, whose activation profiles have interesting implications for computational and neurobiological models of statistical learning (SL). This review begins by briefly recapping the historical development of ideas pertaining to the sensitivity to uncertainty in temporally unfolding inputs. It then discusses several issues at the interface of studies of uncertainty and SL. Following, it presents several current treatments of the neurobiology of uncertainty and reviews recent findings that point to principles that serve as important constraints on future neurobiological theories of uncertainty, and relatedly, SL. This review suggests it may be useful to establish closer links between neurobiological research on uncertainty and SL, considering particularly mechanisms sensitive to local and global structure in inputs, the degree of input uncertainty, the complexity of the system generating the input, learning mechanisms that operate on different temporal scales and the use of learnt information for online prediction.This article is part of the themed issue ‘New frontiers for statistical learning in the cognitive sciences’.
机译:评估环境不确定性程度的能力取决于估计时间上展开的输入的统计数据。反过来,这允许对预测和自下而上的处理进行校准,并发出时间上展开的环境特征变化的信号。在过去的十年中,多项研究检查了大脑如何为输入不确定性进行编码和响应。最初的神经生物学实验主要涉及操纵视觉刺激分布特征的范式,涉及额顶叶和海马系统。然而,后来在听觉领域的工作指向不同的系统,其激活模式对统计学习(SL)的计算和神经生物学模型具有有趣的意义。这篇综述首先简要回顾了有关时间展开的输入中对不确定性的敏感性的思想的历史发展。然后,在不确定性和SL研究的界面上讨论了几个问题。接下来,它介绍了不确定性神经生物学的几种当前治疗方法,并回顾了最近的发现,这些发现指出了对未来不确定性神经生物学理论以及相关的SL起到重要限制作用的原理。这项审查表明,在不确定性和SL的神经生物学研究之间建立更紧密的联系可能是有用的,尤其要考虑对输入中的局部和全局结构敏感的机制,输入不确定性的程度,生成输入的系统的复杂性,运行的学习机制在不同的时间尺度上,以及将学习到的信息用于在线预测。本文是主题问题“认知科学中统计学习的新领域”的一部分。

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