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Polynomial FLANN Classifier for Fetal Cardiotocography Monitoring

机译:用于胎儿心皮监测监测的多项式FLANN分类器

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An efficient adaptive classifier for fetal electronic monitoring based on a modified structure of neural networks is presented. It employs polynomial series as a functional expansion. Training of the Polynomial Neural Network (PNN) classifier is performed using a NewtonLeast Mean Square (NLMS) adaptive algorithm, which requires few iterations and epochs. The convergence is achieved using the PNN classifier in a very short training time. The performance of the proposed classifier has shown a very high overall classification accuracy of 99.74% in comparison with those of the other excising machine learning classifiers. A performance comparison between the proposed PNN classifier and other Functional Link Artificial Neural Network (FLANN) classifiers such as Legendre Neural Network (LNN) and Volterra Neural Network (VNN) based classifiers in electronic fetal monitoring is provided. The simulation results reveal that the PNN classifier outperforms both the LNN and VNN classifiers in terms of mean square error, overall classification accuracy, computational time and computational complexity.
机译:介绍了基于神经网络修改结构的胎儿电子监控有效的自适应分类器。它采用多项式系列作为功能扩展。多项式神经网络(PNN)分类器的训练使用牛顿平均方形(NLMS)自适应算法进行,这需要很少的迭代和时期。在非常短的训练时间中使用PNN分类器实现收敛。拟议的分类器的性能与其他强化机学习分类器的性能相比,拟议的分类器的性能非常高的总体分类精度为99.74%。提供了所提出的PNN分类器与其他功能链路人工神经网络(FLANN)分类器之间的性能比较,例如电子胎儿监测中的传奇神经网络(LNN)和Volterra神经网络(VNN)的分类器。仿真结果表明,PNN分类器在平均方误差,整体分类准确度,计算时间和计算复杂性方面优于LNN和VNN分类器。

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