Gelenbe Erol, Timotheou Stelios
Intelligent Systems and Networks Group, Department of Electrical and Electronic Engineering, Imperial College, London, UK.
Neural Comput. 2008 Sep;20(9):2308-24. doi: 10.1162/neco.2008.04-07-509.
Large-scale distributed systems, such as natural neuronal and artificial systems, have many local interconnections, but they often also have the ability to propagate information very fast over relatively large distances. Mechanisms that enable such behavior include very long physical signaling paths and possibly saccades of synchronous behavior that may propagate across a network. This letter studies the modeling of such behaviors in neuronal networks and develops a related learning algorithm. This is done in the context of the random neural network (RNN), a probabilistic model with a well-developed mathematical theory, which was inspired by the apparently stochastic spiking behavior of certain natural neuronal systems. Thus, we develop an extension of the RNN to the case when synchronous interactions can occur, leading to synchronous firing by large ensembles of cells. We also present an O(N3) gradient descent learning algorithm for an N-cell recurrent network having both conventional excitatory-inhibitory interactions and synchronous interactions. Finally, the model and its learning algorithm are applied to a resource allocation problem that is NP-hard and requires fast approximate decisions.
大规模分布式系统,如自然神经元系统和人工系统,具有许多局部互连,但它们通常也有能力在相对较大的距离上非常快速地传播信息。实现这种行为的机制包括非常长的物理信号路径以及可能跨网络传播的同步行为扫视。本文研究了神经网络中此类行为的建模,并开发了一种相关的学习算法。这是在随机神经网络(RNN)的背景下完成的,RNN是一种具有完善数学理论的概率模型,它受到某些自然神经元系统明显的随机脉冲行为的启发。因此,我们将RNN扩展到可以发生同步相互作用的情况,从而导致大量细胞群体同步放电。我们还为具有传统兴奋性 - 抑制性相互作用和同步相互作用的N细胞递归网络提出了一种O(N3)梯度下降学习算法。最后,将该模型及其学习算法应用于一个NP难的资源分配问题,该问题需要快速的近似决策。