Minai A A, Levy W B
Department of Neurosurgery, University of Virginia, Charlottesville 22908.
Biol Cybern. 1993;70(2):177-87. doi: 10.1007/BF00200831.
Recurrent neural networks with full symmetric connectivity have been extensively studied as associative memories and pattern recognition devices. However, there is considerable evidence that sparse, asymmetrically connected, mainly excitatory networks with broadly directed inhibition are more consistent with biological reality. In this paper, we use the technique of return maps to study the dynamics of random networks with sparse, asymmetric connectivity and nonspecific inhibition. These networks show three qualitatively different kinds of behavior: fixed points, cycles of low period, and extremely long cycles verging on aperiodicity. Using statistical arguments, we relate these behaviors to network parameters and present empirical evidence for the accuracy of this statistical model. The model, in turn, leads to methods for controlling the level of activity in networks. Studying random, untrained networks provides an understanding of the intrinsic dynamics of these systems. Such dynamics could provide a substrate for the much more complex behavior shown when synaptic modification is allowed.
具有完全对称连接性的递归神经网络已被广泛研究作为联想记忆和模式识别设备。然而,有大量证据表明,具有广泛定向抑制的稀疏、非对称连接且主要为兴奋性的网络更符合生物学现实。在本文中,我们使用返回映射技术来研究具有稀疏、非对称连接和非特异性抑制的随机网络的动力学。这些网络表现出三种定性不同的行为:不动点、低周期循环以及趋于非周期性的极长循环。通过统计论证,我们将这些行为与网络参数相关联,并为该统计模型的准确性提供经验证据。反过来,该模型导致了控制网络活动水平的方法。研究随机的、未经训练的网络有助于理解这些系统的内在动力学。这种动力学可以为允许突触修饰时所表现出的更为复杂的行为提供基础。