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首页> 外文期刊>Neural Networks, IEEE Transactions on >Universal Perceptron and DNA-Like Learning Algorithm for Binary Neural Networks: Non-LSBF Implementation
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Universal Perceptron and DNA-Like Learning Algorithm for Binary Neural Networks: Non-LSBF Implementation

机译:二进制神经网络的通用感知器和类似DNA的学习算法:非LSBF实现

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摘要

Implementing linearly nonseparable Boolean functions (non-LSBF) has been an important and yet challenging task due to the extremely high complexity of this kind of functions and the exponentially increasing percentage of the number of non-LSBF in the entire set of Boolean functions as the number of input variables increases. In this paper, an algorithm named DNA-like learning and decomposing algorithm (DNA-like LDA) is proposed, which is capable of effectively implementing non-LSBF. The novel algorithm first trains the DNA-like offset sequence and decomposes non-LSBF into logic XOR operations of a sequence of LSBF, and then determines the weight-threshold values of the multilayer perceptron (MLP) that perform both the decompositions of LSBF and the function mapping the hidden neurons to the output neuron. The algorithm is validated by two typical examples about the problem of approximating the circular region and the well-known n -bit parity Boolean function (PBF).
机译:实现线性不可分的布尔函数(non-LSBF)已成为一项重要而又具有挑战性的任务,这是因为此类函数的复杂性极高,并且在整个布尔函数集中,非LSBF的数量呈指数增长。输入变量的数量增加。本文提出了一种能够有效实现非LSBF的类DNA学习分解算法(类DNA LDA)。新算法首先训练类似DNA的偏移序列,然后将非LSBF分解为LSBF序列的逻辑XOR运算,然后确定同时执行LSBF和LSBF分解的多层感知器(MLP)的权重阈值。函数将隐藏的神经元映射到输出神经元。该算法通过关于圆形区域和众所周知的n位奇偶校验布尔函数(PBF)近似问题的两个典型示例进行了验证。

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