具有新学习方案的多值神经元

Shin-Fu Wu, Shie-Jue Lee
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引用次数: 1

摘要

多值神经元(MVN)是一种有效的分类和回归技术。它是一个具有复值权值和输入/输出的神经元,激活函数的输出沿复平面上的单位圆运动。因此,MVN可能比s型基或径向基神经元具有更多的功能。在某些情况下,一对加权和会在两个扇区之间振荡,学习过程很难收敛。此外,许多加权和可能位于每个扇区的边界附近,这可能会导致分类精度下降。本文提出了多值神经元的两种修正方法。一种涉及移动边界,另一种涉及在扇区中心的目标。实验结果表明,所提出的改进方法可以提高MVN的性能,使其更有效地收敛。
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Multi-valued neuron with new learning schemes
Multi-valued neuron (MVN) is an efficient technique for classification and regression. It is a neuron with complex-valued weights and inputs/output, and the output of the activation function is moving along the unit circle on the complex plane. Therefore, MVN may have more functionalities than sigmoidal or radial basis function neurons. In some cases, a pair of weighted sums would oscillate between two sectors and the learning process can hardly converge. Besides, many weighted sums may be located around the borders of each sector, which may cause bad performance in classification accuracy. In this paper, we propose two modifications of multivalued neuron. One is involved with moving boundaries and the other one with targets at the center of sectors. Experimental results show that the proposed modifications can improve the performance of MVN and help it to converge more efficiently.
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