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Universal Perceptron and DNA-Like Learning Algorithm for Binary Neural Networks: LSBF and PBF Implementations

机译:二进制神经网络的通用感知器和类似DNA的学习算法:LSBF和PBF实现

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摘要

Universal perceptron (UP), a generalization of Rosenblatt's perceptron, is considered in this paper, which is capable of implementing all Boolean functions (BFs). In the classification of BFs, there are: 1) linearly separable Boolean function (LSBF) class, 2) parity Boolean function (PBF) class, and 3) non-LSBF and non-PBF class. To implement these functions, UP takes different kinds of simple topological structures in which each contains at most one hidden layer along with the smallest possible number of hidden neurons. Inspired by the concept of DNA sequences in biological systems, a novel learning algorithm named DNA-like learning is developed, which is able to quickly train a network with any prescribed BF. The focus is on performing LSBF and PBF by a single-layer perceptron (SLP) with the new algorithm. Two criteria for LSBF and PBF are proposed, respectively, and a new measure for a BF, named nonlinearly separable degree (NLSD), is introduced. In the sense of this measure, the PBF is the most complex one. The new algorithm has many advantages including, in particular, fast running speed, good robustness, and no need of considering the convergence property. For example, the number of iterations and computations in implementing the basic $2$-bit logic operations such as and, or, and xor by using the new algorithm is far smaller than the ones needed by using other existing algorithms such as error-correction (EC) and backpropagation (BP) algorithms. Moreover, the synaptic weights and threshold values derived from UP can be directly used in designing of the template of cellular neural networks (CNNs), which has been considered as a new spatial-n–temporal sensory computing paradigm.
机译:本文考虑了Rosenblatt感知器的泛型通用感知器(UP),它能够实现所有布尔函数(BF)。在BF的分类中,有:1)线性可分离布尔函数(LSBF)类,2)奇偶性布尔函数(PBF)类,以及3)非LSBF和非PBF类。为了实现这些功能,UP采用了各种简单的拓扑结构,其中每个拓扑结构最多包含一个隐藏层以及尽可能少的隐藏神经元。受生物系统中DNA序列概念的启发,开发了一种名为DNA样学习的新颖学习算法,该算法能够快速训练具有任何规定BF的网络。重点是使用新算法通过单层感知器(SLP)执行LSBF和PBF。分别提出了LSBF和PBF的两个标准,并介绍了一种新的BF度量,即非线性可分离度(NLSD)。从这个意义上说,PBF是最复杂的一种。该新算法具有很多优点,特别是运行速度快,鲁棒性好以及无需考虑收敛性。例如,通过使用新算法来实现基本的$ 2 $位逻辑运算(例如and,or和xor)的迭代次数和计算量远远小于使用其他现有算法(例如纠错( EC)和反向传播(BP)算法。此外,从UP导出的突触权重和阈值可直接用于设计细胞神经网络(CNN)的模板,该模板已被视为一种新的时空n时空感觉计算范式。

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