Biosystems. 2022 Jan;211:104570. doi: 10.1016/j.biosystems.2021.104570. Epub 2021 Nov 18.
The primate heteromodal cortex presents an evident functional modularity at a mesoscopic level, with physiological and anatomical evidence pointing to it as likely substrate of long-term memory. In order to investigate some of its properties, a model of multimodular autoassociator is studied. Each of the many modules represents a neocortical functional ensemble of recurrently connected neurons and operates as a Hebbian autoassociator, storing a number of local features which it can recall upon cue. The global memory patterns are made of combinations of features sparsely distributed across the modules. Intermodular connections are modelled as a finite-connectivity random graph. Any pair of features in any respective pair of modules is allowed to be involved in several memory patterns; the coarse-grained modular network dynamics is defined in such a way as to overcome the consequent ambiguity of associations. Effects of long-range homeostatic synaptic scaling on network performance are also assessed. The dynamical process of cued retrieval almost saturates a natural upper bound while producing negligible spurious activation. The extent of finite-size effects on storage capacity is quantitatively evaluated. In the limit of infinite size, the functional relationship between storage capacity and number of features per module reduces to that which other authors found by methods from equilibrium statistical mechanics, which suggests that the origin of the functional form is of a combinatorial nature. In contrast with its apparent inevitability at intramodular level, long-range synaptic scaling results to be of minor relevance to both retrieval and storage capacity, casting doubt on its existence in the neocortex. A conjecture is also posited about how statistical fluctuation of connectivity across the network may underpin spontaneous emergence of semantic hierarchies through learning.
灵长类动物的异模态皮质在中观水平上呈现出明显的功能模块化,生理学和解剖学证据表明它可能是长期记忆的基础。为了研究其某些特性,研究了一种多模块自联想模型。许多模块中的每一个都代表了一个具有递归连接神经元的新皮质功能集合,并且作为赫布式自联想器运行,存储它可以在提示下回忆的许多局部特征。全局记忆模式由跨模块稀疏分布的特征组合而成。模块间的连接被建模为有限连接的随机图。允许任何一对模块中的任意一对特征参与多个记忆模式;粗粒化的模块网络动力学被定义为克服关联的后果的模糊性。还评估了长程同型突触缩放对网络性能的影响。提示检索的动态过程几乎饱和了自然上限,同时产生了可忽略的虚假激活。定量评估了有限大小对存储容量的影响。在无限大小的极限下,存储容量和每个模块的特征数量之间的功能关系简化为其他作者通过平衡统计力学方法找到的关系,这表明功能形式的起源是组合性质的。与在模块内水平上的明显必然性相反,长程突触缩放对检索和存储容量的相关性都较小,这对其在新皮质中的存在提出了质疑。还提出了一个假设,即网络连接的统计波动如何通过学习来支持语义层次结构的自发出现。