Rich Dylan, Cazettes Fanny, Wang Yunyan, Peña José Luis, Fischer Brian J
Department of Mathematics, Seattle University, 901 12th Ave, Seattle, WA, 98122, USA.
J Comput Neurosci. 2015 Apr;38(2):315-23. doi: 10.1007/s10827-014-0545-1. Epub 2015 Jan 6.
Bayesian models are often successful in describing perception and behavior, but the neural representation of probabilities remains in question. There are several distinct proposals for the neural representation of probabilities, but they have not been directly compared in an example system. Here we consider three models: a non-uniform population code where the stimulus-driven activity and distribution of preferred stimuli in the population represent a likelihood function and a prior, respectively; the sampling hypothesis which proposes that the stimulus-driven activity over time represents a posterior probability and that the spontaneous activity represents a prior; and the class of models which propose that a population of neurons represents a posterior probability in a distributed code. It has been shown that the non-uniform population code model matches the representation of auditory space generated in the owl's external nucleus of the inferior colliculus (ICx). However, the alternative models have not been tested, nor have the three models been directly compared in any system. Here we tested the three models in the owl's ICx. We found that spontaneous firing rate and the average stimulus-driven response of these neurons were not consistent with predictions of the sampling hypothesis. We also found that neural activity in ICx under varying levels of sensory noise did not reflect a posterior probability. On the other hand, the responses of ICx neurons were consistent with the non-uniform population code model. We further show that Bayesian inference can be implemented in the non-uniform population code model using one spike per neuron when the population is large and is thus able to support the rapid inference that is necessary for sound localization.
贝叶斯模型在描述感知和行为方面常常很成功,但概率的神经表征仍存在疑问。关于概率的神经表征有几种不同的提议,但它们尚未在一个示例系统中进行直接比较。在这里,我们考虑三种模型:一种非均匀群体编码,其中群体中刺激驱动的活动和偏好刺激的分布分别代表似然函数和先验;抽样假设,该假设提出随时间的刺激驱动活动代表后验概率,而自发活动代表先验;以及一类模型,该模型提出一群神经元在分布式编码中代表后验概率。已经表明,非均匀群体编码模型与猫头鹰下丘外侧核(ICx)中产生的听觉空间表征相匹配。然而,其他模型尚未经过测试,这三种模型也未在任何系统中进行直接比较。在这里,我们在猫头鹰的ICx中测试了这三种模型。我们发现这些神经元的自发放电率和平均刺激驱动反应与抽样假设的预测不一致。我们还发现,在不同水平的感觉噪声下,ICx中的神经活动并未反映后验概率。另一方面,ICx神经元的反应与非均匀群体编码模型一致。我们进一步表明,当群体规模较大时,贝叶斯推理可以在非均匀群体编码模型中通过每个神经元一个脉冲来实现,因此能够支持声音定位所需的快速推理。