Department of Brain and Cognitive Sciences, University of Rochester, Rochester, New York, USA.
Nat Neurosci. 2013 Sep;16(9):1170-8. doi: 10.1038/nn.3495. Epub 2013 Aug 18.
There is strong behavioral and physiological evidence that the brain both represents probability distributions and performs probabilistic inference. Computational neuroscientists have started to shed light on how these probabilistic representations and computations might be implemented in neural circuits. One particularly appealing aspect of these theories is their generality: they can be used to model a wide range of tasks, from sensory processing to high-level cognition. To date, however, these theories have only been applied to very simple tasks. Here we discuss the challenges that will emerge as researchers start focusing their efforts on real-life computations, with a focus on probabilistic learning, structural learning and approximate inference.
有强有力的行为和生理证据表明,大脑既能表示概率分布,又能进行概率推理。计算神经科学家已经开始揭示这些概率表示和计算可能在神经回路中是如何实现的。这些理论的一个特别吸引人的方面是它们的通用性:它们可以用于建模从感觉处理到高级认知等广泛的任务。然而,到目前为止,这些理论仅应用于非常简单的任务。在这里,我们讨论了研究人员开始将注意力集中在现实生活中的计算上时将出现的挑战,重点是概率学习、结构学习和近似推理。