National Volen Center for Complex Systems, Brandeis University, Volen 208/MS 013, Waltham, MA 02454, USA.
Trends Cogn Sci. 2010 Mar;14(3):119-30. doi: 10.1016/j.tics.2010.01.003. Epub 2010 Feb 12.
Human perception has recently been characterized as statistical inference based on noisy and ambiguous sensory inputs. Moreover, suitable neural representations of uncertainty have been identified that could underlie such probabilistic computations. In this review, we argue that learning an internal model of the sensory environment is another key aspect of the same statistical inference procedure and thus perception and learning need to be treated jointly. We review evidence for statistically optimal learning in humans and animals, and re-evaluate possible neural representations of uncertainty based on their potential to support statistically optimal learning. We propose that spontaneous activity can have a functional role in such representations leading to a new, sampling-based, framework of how the cortex represents information and uncertainty.
人类感知最近被描述为基于噪声和模糊感官输入的统计推断。此外,已经确定了合适的不确定性神经表示,这些表示可以作为这种概率计算的基础。在这篇综述中,我们认为学习对感官环境的内部模型是同一统计推断过程的另一个关键方面,因此感知和学习需要一起处理。我们回顾了人类和动物中统计最优学习的证据,并根据它们支持统计最优学习的潜力重新评估不确定性的可能神经表示。我们提出,自发活动在这些表示中可能具有功能作用,从而为大脑如何表示信息和不确定性提供了一种新的基于采样的框架。