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HONNs with ELM algorithm for medical applications

机译:具有ELM算法的医疗应用HONNS

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Higher Order Neural Networks (HONNs) are Artificial Neural Networks (ANNs) in which the net input to a computational neuron is a weighted sum of products of its inputs (rather than just a weighted sum of its inputs as in traditional ANNs). It was known that HONNs can implement invariant pattern recognition as well as handling high frequency and high order nonlinear business data. Extreme Learning Machine (ELM) randomly chooses hidden neurons and analytically determines the output weights. With ELM algorithm, only the connection weights between hidden layer and output layer are adjusted. This paper develops an ELM algorithm for HONN models and applies it in several significant medical cases. The experimental results demonstrate significant advantages of HONN models with ELM algorithm such as faster training and improved generalization abilities (in comparison with standard HONN models).
机译:高阶神经网络(HONNS)是人工神经网络(ANN),其中对计算神经元的网络输入是其输入的产品的加权和(而不是在传统ANN中的输入中的加权总和)。 据称,HUNNS可以实施不变的模式识别以及处理高频和高阶非线性业务数据。 极端学习机(ELM)随机选择隐藏的神经元并分析确定输出权重。 利用ELM算法,仅调整隐藏层和输出层之间的连接权重。 本文为HONN模型开发了ELM算法,并在几种显着的医疗情况下应用它。 实验结果表明HONN模型与ELM算法的显着优势,如更快的培训和改进的泛化能力(与标准HONN模型相比)。

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