Blanzieri E, Grandi F, Maio D
C.I.O.C.-C.N.R., Bologna, Italy.
Biol Cybern. 1996 Jan;74(1):73-83. doi: 10.1007/BF00199139.
In this work we present a neural network model incorporating activity-dependent presynaptic facilitation with multidimensional inputs. The processing unit used is based on a slightly simplified version of the Learning Gate Model proposed by Ciaccia et al. (1992). The network topology integrates a well-known biological neural circuit with a lateral inhibition connection subnet. By means of simulation experiments, we show that the proposed networks exhibit basic and high-order features of associative learning. In particular, overshadowing and blocking are reproduced in the presence of both noise-free and noisy inputs. The role of noise in the development of high-order learning capabilities is also discussed.
在这项工作中,我们提出了一种神经网络模型,该模型将活动依赖的突触前易化与多维输入相结合。所使用的处理单元基于Ciaccia等人(1992年)提出的学习门模型的略微简化版本。网络拓扑将一个著名的生物神经回路与一个侧向抑制连接子网集成在一起。通过模拟实验,我们表明所提出的网络展现出联想学习的基本和高阶特征。特别是,在无噪声和有噪声输入的情况下,都能再现遮蔽和阻断现象。还讨论了噪声在高阶学习能力发展中的作用。