用WASD神经网络用十进制数字表示唯一性逻辑

Ru Wang, Y. Wang, Chengxu Ye, Dongsheng Guo, Yunong Zhang
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摘要

本文提出并定义了一个新的概念——用十进制数表示的唯一性逻辑(UL-D)。为了实现UL-D,我们基于权重和结构确定算法(即生成的WASD-NN)构建了一个神经网络(即NN)。不同于BP-NN (back-propagation neural network, BP-NN)的权值调整需要经过漫长的迭代过程,且不能自适应获取最优结构,WASD-NN可以直接确定最优权值并自动确定最优结构。注意,UL-D是一个非线性的不连续映射,其近似以前很少被研究过。本文首先对常用的连续幂函数激活的WASD-NN进行了研究,但相应的数值实验结果并不令人满意。在了解最小二乘法性质的基础上,创造性地建立了由不连续sgn函数激活的WASD-NN,数值实验研究充分证明了sgn函数激活的WASD-NN在实现最小二乘法方面具有高效、优越的逼近能力。
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Uniqueness logic represented via decimal numbers with WASD neural network
A novel concept, uniqueness logic represented via decimal numbers (UL-D), is proposed and defined in this paper. Aiming at achieving the UL-D, we construct a neural network (i.e., NN) based on weights-and-structure-determination algorithm (i.e., the resultant WASD-NN). Differing from the back-propagation neural network (BP-NN) adjusting weights by lengthy iterative process and being unable to acquire the optimal structure adaptively, the WASD-NN can determine the optimal weights directly and the optimal structure automatically. Note that the UL-D is a nonlinear discontinuous mapping, of which the approximation has rarely been investigated before. In this paper, we firstly investigate the WASD-NN activated by commonly used continuous power functions, with corresponding numerical experiment results less satisfactory. By understanding the nature of the UL-D, the WASD-NN activated by discontinuous signum function is thus creatively built up, and the numerical experiment studies demonstrate well the efficient and superior approximating ability of the signum-function activated WASD-NN in achieving the UL-D.
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