Neelakanta P S, Sudhakar R, DeGroff D
Department of Electrical Engineering, Florida Atlantic University, Boca Raton, FL 33431.
Biol Cybern. 1991;65(5):331-8. doi: 10.1007/BF00216966.
In neural networks the activation process controls the output as a nonlinear function of the input; and, this output remains bounded between limits as decided by a logistic function known as the sigmoid (S-shaped). Presently, by applying the considerations of Maxwell-Boltzmann statistics, the Langevin function is shown as the appropriate and justifiable sigmoid (instead of the conventional hyperbolic tangent function) to depict the bipolar nonlinear logic-operation enunciated by the collective stochastical response of artificial neurons under activation. That is, the graded response of a large network of 'neurons' such as Hopfield's can be stochastically justified via the proposed model. The model is consistent with the established link between the Hopfield model and the statistical mechanics. The Langevin function (in lieu of conventional hyperbolic tangent and/or exponential sigmoids) in determining nonlinear decision boundaries, in characterizing the neural networks by the Langevin machine versus the Boltzmann machine, in sharpening and annealing schedules and in the optimization of nonlinear detector performance are discussed.
在神经网络中,激活过程将输出控制为输入的非线性函数;并且,该输出保持在由称为S形函数(sigmoid)的逻辑函数所确定的界限之间。目前,通过应用麦克斯韦-玻尔兹曼统计的相关考量,朗之万函数被证明是描述激活状态下人工神经元集体随机响应所阐明的双极非线性逻辑运算的合适且合理的S形函数(而非传统的双曲正切函数)。也就是说,诸如霍普菲尔德网络这样的大量“神经元”网络的分级响应可以通过所提出的模型进行随机论证。该模型与霍普菲尔德模型和统计力学之间已确立的联系相一致。讨论了朗之万函数(代替传统的双曲正切和/或指数S形函数)在确定非线性决策边界、通过朗之万机器与玻尔兹曼机器表征神经网络、锐化和退火调度以及优化非线性探测器性能方面的作用。