Hopfield J J
Proc Natl Acad Sci U S A. 1984 May;81(10):3088-92. doi: 10.1073/pnas.81.10.3088.
A model for a large network of "neurons" with a graded response (or sigmoid input-output relation) is studied. This deterministic system has collective properties in very close correspondence with the earlier stochastic model based on McCulloch - Pitts neurons. The content- addressable memory and other emergent collective properties of the original model also are present in the graded response model. The idea that such collective properties are used in biological systems is given added credence by the continued presence of such properties for more nearly biological "neurons." Collective analog electrical circuits of the kind described will certainly function. The collective states of the two models have a simple correspondence. The original model will continue to be useful for simulations, because its connection to graded response systems is established. Equations that include the effect of action potentials in the graded response system are also developed.
研究了一个具有分级响应(或S形输入-输出关系)的“神经元”大型网络模型。这个确定性系统具有与早期基于麦卡洛克-皮茨神经元的随机模型非常相似的集体特性。原始模型的内容可寻址存储器和其他涌现的集体特性在分级响应模型中也同样存在。由于这些特性在更接近生物“神经元”的模型中持续存在,因此生物系统中使用此类集体特性的观点得到了进一步的支持。所描述的那种集体模拟电路肯定会起作用。这两个模型的集体状态具有简单的对应关系。原始模型对于模拟仍将有用,因为它与分级响应系统的联系已经建立。还推导了包含分级响应系统中动作电位效应的方程。