Data Pattern Recognition Based on Ultra-High Frequency Sigmoid and Trigonometric Higher Order Neural Networks

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Abstract

This chapter develops a new nonlinear model, ultra high frequency sigmoid and trigonometric higher order neural networks (UGT-HONN), for data pattern recognition. UGT-HONN includes ultra high frequency sigmoid and sine function higher order neural networks (UGS-HONN) and ultra high frequency sigmoid and cosine functions higher order neural networks (UGC-HONN). UGS-HONN and UGC-HONN models are used to recognition data patterns. Results show that UGS-HONN and UGC-HONN models are better than other polynomial higher order neural network (PHONN) and trigonometric higher order neural network (THONN) models, since UGS-HONN and UGC-HONN models can recognize data pattern with error approaching 10-6.
基于超高频s型和三角高阶神经网络的数据模式识别
本章发展了一种新的用于数据模式识别的非线性模型,超高频s型和三角高阶神经网络(UGT-HONN)。UGT-HONN包括超高频s型和正弦函数高阶神经网络(UGS-HONN)和超高频s型和余弦函数高阶神经网络(UGC-HONN)。采用UGS-HONN和UGC-HONN模型对数据模式进行识别。结果表明,UGS-HONN和UGC-HONN模型的数据模式识别误差接近10-6,优于其他多项式高阶神经网络(PHONN)和三角高阶神经网络(THONN)模型。
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