Department of Mathematics and Statistics, University of Maryland Baltimore County, Baltimore, MD 21250 USA.
Cogn Neurodyn. 2010 Dec;4(4):295-313. doi: 10.1007/s11571-010-9110-4. Epub 2010 Apr 20.
A functional model of biological neural networks, called temporal hierarchical probabilistic associative memory (THPAM), is proposed in this paper. THPAM comprises functional models of dendritic trees for encoding inputs to neurons, a first type of neuron for generating spike trains, a second type of neuron for generating graded signals to modulate neurons of the first type, supervised and unsupervised Hebbian learning mechanisms for easy learning and retrieving, an arrangement of dendritic trees for maximizing generalization, hardwiring for rotation-translation-scaling invariance, and feedback connections with different delay durations for neurons to make full use of present and past informations generated by neurons in the same and higher layers. These functional models and their processing operations have many functions of biological neural networks that have not been achieved by other models in the open literature and provide logically coherent answers to many long-standing neuroscientific questions. However, biological justifications of these functional models and their processing operations are required for THPAM to qualify as a macroscopic model (or low-order approximate) of biological neural networks.
本文提出了一种称为时间层次概率联想记忆模型(THPAM)的生物神经网络功能模型。THPAM 包括用于对神经元输入进行编码的树突树功能模型、用于产生尖峰序列的第一类神经元、用于产生级联信号以调节第一类神经元的第二类神经元、用于易于学习和检索的监督和非监督海伯学习机制、用于最大化泛化的树突树排列、用于旋转-平移-缩放不变性的硬连线以及用于神经元的反馈连接,以充分利用同一和更高层神经元产生的当前和过去信息。这些功能模型及其处理操作具有许多生物神经网络的功能,这是其他文献中的模型所无法实现的,并为许多长期存在的神经科学问题提供了逻辑一致的答案。然而,这些功能模型及其处理操作的生物学依据是 THPAM 作为生物神经网络的宏观模型(或低阶近似)的必要条件。