Baram Yoram
Computer Science Department, Technion- Israel Institute of Technology, 32000 Haifa, Israel.
Cogn Neurodyn. 2020 Dec;14(6):837-848. doi: 10.1007/s11571-020-09602-9. Epub 2020 Jun 19.
Early studies of cortical information codes and memory capacity have assumed large neural networks, which, subject to evenly probable binary (on/off) activity, were found to be endowed with large storage and retrieval capacities under the Hebbian paradigm. Here, we show that such networks are plagued with exceedingly high cross-network connectivity, yielding long code words, which are linguistically non-realistic and difficult to memorize and comprehend. Noting that the neural circuit activity code is jointly governed by somatic and synaptic activity states, termed neural circuit polarities, we show that, subject to subcritical polarity probability, random-graph-theoretic considerations imply small neural circuit segregation. Such circuits are shown to represent linguistically plausible cortical code words which, in turn, facilitate storage and retrieval of both circuit connectivity and firing-rate dynamics.
早期关于皮层信息编码和记忆容量的研究假设存在大型神经网络,在等概率的二元(开/关)活动条件下,发现这些网络在赫布范式下具有较大的存储和检索能力。在这里,我们表明,此类网络存在极高的跨网络连通性问题,导致编码词过长,这在语言学上不现实且难以记忆和理解。注意到神经回路活动编码由体细胞和突触活动状态共同控制,称为神经回路极性,我们表明,在亚临界极性概率条件下,随机图论的考虑意味着神经回路的分隔较小。此类回路被证明能够表示语言学上合理的皮层编码词,进而有助于存储和检索回路连通性以及放电率动态。