Scarpetta Silvia, Zhaoping L, Hertz John
Department of Physics E. R. Caianiello, Salerno University, Baronissi, Italy.
Neural Comput. 2002 Oct;14(10):2371-96. doi: 10.1162/08997660260293265.
We introduce a model of generalized Hebbian learning and retrieval in oscillatory neural networks modeling cortical areas such as hippocampus and olfactory cortex. Recent experiments have shown that synaptic plasticity depends on spike timing, especially on synapses from excitatory pyramidal cells, in hippocampus, and in sensory and cerebellar cortex. Here we study how such plasticity can be used to form memories and input representations when the neural dynamics are oscillatory, as is common in the brain (particularly in the hippocampus and olfactory cortex). Learning is assumed to occur in a phase of neural plasticity, in which the network is clamped to external teaching signals. By suitable manipulation of the nonlinearity of the neurons or the oscillation frequencies during learning, the model can be made, in a retrieval phase, either to categorize new inputs or to map them, in a continuous fashion, onto the space spanned by the imprinted patterns. We identify the first of these possibilities with the function of olfactory cortex and the second with the observed response characteristics of place cells in hippocampus. We investigate both kinds of networks analytically and by computer simulations, and we link the models with experimental findings, exploring, in particular, how the spike timing dependence of the synaptic plasticity constrains the computational function of the network and vice versa.
我们在对诸如海马体和嗅觉皮层等皮质区域进行建模的振荡神经网络中引入了一种广义赫布学习与检索模型。最近的实验表明,突触可塑性取决于放电时间,特别是海马体以及感觉和小脑皮层中来自兴奋性锥体细胞的突触。在这里,我们研究当神经动力学呈振荡状态时(这在大脑中很常见,尤其是在海马体和嗅觉皮层),这种可塑性如何用于形成记忆和输入表征。假设学习发生在神经可塑性阶段,在此阶段网络被钳制于外部教学信号。通过在学习过程中对神经元的非线性或振荡频率进行适当操作,该模型在检索阶段可以对新输入进行分类,或者以连续方式将它们映射到由印记模式所跨越的空间。我们将第一种可能性与嗅觉皮层的功能相关联,将第二种可能性与海马体中位置细胞的观察到的反应特性相关联。我们通过分析和计算机模拟对这两种网络进行研究,并将模型与实验结果相联系,特别探索突触可塑性对放电时间的依赖性如何限制网络的计算功能,反之亦然。