Peretto P
Biol Cybern. 1984;50(1):51-62. doi: 10.1007/BF00317939.
Among the various models proposed so far to account for the properties of neural networks, the one devised by Little and the one derived by Hopfield prove to be the most interesting because they allow the use of statistical mechanics techniques. The link between the Hopfield model and the statistical mechanics is provided by the existence of an extensive quantity. When the synaptic plasticity behaves according to a Hebbian procedure, the analogy with the classical spin glass models studied by Van Hemmen is complete. In particular exact solutions describing the steady states of noisy systems are found. On the other hand, the Little model introduces a Markovian dynamics. One shows that the evolution equation obeys the microreversibility principle if the synaptic efficiencies are symmetrical. Therefore, assuming that such a symmetry materializes, the Little model has to obey a Gibbs statistics. The corresponding Hamiltonian is derived accordingly. At last, using these results, both models are shown to display associative memory properties. In particular the storage capacity of neural networks working along with the Little dynamics is similar to the capacity of Hopfield neural networks. The conclusion drawn from the study of the Hopfield model can be extended to the Little model, which is certainly a more realistic description of the biological situation.
在目前提出的用于解释神经网络特性的各种模型中,由利特尔设计的模型和由霍普菲尔德推导的模型被证明是最有趣的,因为它们允许使用统计力学技术。霍普菲尔德模型与统计力学之间的联系是由一个广延量的存在提供的。当突触可塑性按照赫布过程表现时,与范·海明研究的经典自旋玻璃模型的类比就完整了。特别是找到了描述噪声系统稳态的精确解。另一方面,利特尔模型引入了马尔可夫动力学。有人表明,如果突触效率是对称的,演化方程服从微观可逆性原理。因此,假设这种对称性得以实现,利特尔模型必须服从吉布斯统计。相应的哈密顿量也据此推导出来。最后,利用这些结果,证明这两个模型都具有联想记忆特性。特别是,与利特尔动力学一起工作的神经网络的存储容量与霍普菲尔德神经网络的容量相似。从对霍普菲尔德模型的研究中得出的结论可以扩展到利特尔模型,后者无疑是对生物情况更现实的描述。