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Learning of the Non-Threshold Functions of Multiple-Valued Logic by a Single Multi-Valued Neuron With a Periodic Activation Function

机译:通过定期激活函数的单值神经元对多值逻辑的非阈值函数的学习

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In this paper, a theory of multiple-valued threshold functions over the field of complex numbers is further developed. k-valued threshold functions over the field of complex numbers can be learned using a single multi-valued neuron (MVN). We propose a new approach for the projection of a k-valued function, which is not a threshold one, to m-valued logic (m>k), where this function becomes a partially defined m-valued threshold function and can be learned by a single MVN. To build this projection, a periodic activation function for the MVN is used. This new activation function and a modified learning algorithm make it possible to learn nonlinearly separable multiple-valued functions using a single MVN.
机译:在本文中,进一步开发了在复数号领域的多值阈值函数的理论。可以使用单个多值神经元(MVN)学习在复数的字段上的K值阈值函数。我们提出了一种新的方法,用于投影k值函数,该函数不是阈值函数,到M值逻辑(M> K),其中该函数变为部分定义的M值阈值函数,并且可以通过单个mvn。要构建此投影,使用MVN的周期性激活函数。这种新的激活功能和修改的学习算法使得可以使用单个MVN学习非线性可分离的多值函数。

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