Breffle Jordan, Mokashe Subhadra, Qiu Siwei, Miller Paul
Neuroscience Program, Brandeis University, 415 South St, Waltham, MA 02454.
Volen National Center for Complex Systems, Brandeis University, 415 South St, Waltham, MA 02454.
bioRxiv. 2023 Jun 7:2023.06.05.543727. doi: 10.1101/2023.06.05.543727.
Neural circuits with multiple discrete attractor states could support a variety of cognitive tasks according to both empirical data and model simulations. We assess the conditions for such multistability in neural systems, using a firing-rate model framework, in which clusters of neurons with net self-excitation are represented as units, which interact with each other through random connections. We focus on conditions in which individual units lack sufficient self-excitation to become bistable on their own. Rather, multistability can arise via recurrent input from other units as a network effect for subsets of units, whose net input to each other when active is sufficiently positive to maintain such activity. In terms of the strength of within-unit self-excitation and standard-deviation of random cross-connections, the region of multistability depends on the firing-rate curve of units. Indeed, bistability can arise with zero self-excitation, purely through zero-mean random cross-connections, if the firing-rate curve rises supralinearly at low inputs from a value near zero at zero input. We simulate and analyze finite systems, showing that the probability of multistability can peak at intermediate system size, and connect with other literature analyzing similar systems in the infinite-size limit. We find regions of multistability with a bimodal distribution for the number of active units in a stable state. Finally, we find evidence for a log-normal distribution of sizes of attractor basins, which can appear as Zipf's Law when sampled as the proportion of trials within which random initial conditions lead to a particular stable state of the system.
根据经验数据和模型模拟,具有多个离散吸引子状态的神经回路可以支持多种认知任务。我们使用发放率模型框架评估神经系统中这种多稳定性的条件,在该框架中,具有净自激的神经元簇被表示为单元,它们通过随机连接相互作用。我们关注的是单个单元缺乏足够的自激来独自成为双稳的条件。相反,多稳定性可以通过来自其他单元的循环输入作为单元子集的网络效应而出现,这些单元在活动时相互之间的净输入足够正以维持这种活动。就单元内自激的强度和随机交叉连接的标准差而言,多稳定性区域取决于单元的发放率曲线。实际上,如果发放率曲线在低输入时从零输入时接近零的值超线性上升,那么双稳性可以在零自激的情况下纯粹通过零均值随机交叉连接而出现。我们模拟和分析了有限系统,表明多稳定性的概率可以在中间系统规模处达到峰值,并与其他在无限规模极限下分析类似系统的文献相联系。我们发现稳定状态下活动单元数量具有双峰分布的多稳定性区域。最后,我们发现了吸引子盆地大小呈对数正态分布的证据,当作为随机初始条件导致系统特定稳定状态的试验比例进行采样时,这可能表现为齐普夫定律。