Fasoli Diego, Cattani Anna, Panzeri Stefano
Laboratory of Neural Computation, Center for Neuroscience and Cognitive Systems @UniTn, Istituto Italiano di Tecnologia, 38068 Rovereto, Italy, and Center for Brain and Cognition, Computational Neuroscience Group, Universitat Pompeu Fabra, 08002 Barcelona, Spain
Laboratory of Neural Computation, Center for Neuroscience and Cognitive Systems @UniTn, Istituto Italiano di Tecnologia, 38068 Rovereto, Italy, and Department of Biomedical and Clinical Sciences "L. Sacco," University of Milan, 20157 Milan, Italy
Neural Comput. 2018 May;30(5):1258-1295. doi: 10.1162/NECO_a_01069. Epub 2018 Mar 22.
Despite their biological plausibility, neural network models with asymmetric weights are rarely solved analytically, and closed-form solutions are available only in some limiting cases or in some mean-field approximations. We found exact analytical solutions of an asymmetric spin model of neural networks with arbitrary size without resorting to any approximation, and we comprehensively studied its dynamical and statistical properties. The network had discrete time evolution equations and binary firing rates, and it could be driven by noise with any distribution. We found analytical expressions of the conditional and stationary joint probability distributions of the membrane potentials and the firing rates. By manipulating the conditional probability distribution of the firing rates, we extend to stochastic networks the associating learning rule previously introduced by Personnaz and coworkers. The new learning rule allowed the safe storage, under the presence of noise, of point and cyclic attractors, with useful implications for content-addressable memories. Furthermore, we studied the bifurcation structure of the network dynamics in the zero-noise limit. We analytically derived examples of the codimension 1 and codimension 2 bifurcation diagrams of the network, which describe how the neuronal dynamics changes with the external stimuli. This showed that the network may undergo transitions among multistable regimes, oscillatory behavior elicited by asymmetric synaptic connections, and various forms of spontaneous symmetry breaking. We also calculated analytically groupwise correlations of neural activity in the network in the stationary regime. This revealed neuronal regimes where, statistically, the membrane potentials and the firing rates are either synchronous or asynchronous. Our results are valid for networks with any number of neurons, although our equations can be realistically solved only for small networks. For completeness, we also derived the network equations in the thermodynamic limit of infinite network size and we analytically studied their local bifurcations. All the analytical results were extensively validated by numerical simulations.
尽管具有生物学合理性,但具有不对称权重的神经网络模型很少能通过解析方法求解,并且仅在某些极限情况或某些平均场近似中才有封闭形式的解。我们找到了任意大小的不对称神经网络自旋模型的精确解析解,且无需借助任何近似,并全面研究了其动力学和统计特性。该网络具有离散时间演化方程和二元发放率,并且可以由具有任何分布的噪声驱动。我们找到了膜电位和发放率的条件联合概率分布以及平稳联合概率分布的解析表达式。通过操纵发放率的条件概率分布,我们将Personnaz及其同事先前引入的关联学习规则扩展到了随机网络。新的学习规则允许在存在噪声时安全存储点吸引子和循环吸引子,这对内容可寻址存储器具有重要意义。此外,我们研究了零噪声极限下网络动力学的分岔结构。我们通过解析推导得出了网络的余维1和余维2分岔图的示例,这些图描述了神经元动力学如何随外部刺激而变化。这表明网络可能会在多稳态、由不对称突触连接引发的振荡行为以及各种形式的自发对称性破缺之间发生转变。我们还解析计算了网络在平稳状态下神经活动的分组相关性。这揭示了在统计上膜电位和发放率要么同步要么异步的神经元状态。我们的结果对于任意数量神经元的网络都是有效的,尽管我们的方程仅对小型网络才能实际求解。为了完整起见,我们还推导了无限网络大小的热力学极限下的网络方程,并对其局部分岔进行了解析研究。所有解析结果都通过数值模拟进行了广泛验证。