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A radial basis probabilistic process neural network model and corresponding classification algorithm

机译:径向基概率过程神经网络模型与相应的分类算法

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A radial basis probabilistic process neuron (RBPPN) and radial basis probabilistic process neural network (RBPPNN) model are proposed to fuse a priori knowledge for application to time-varying signal pattern classification. RBPPN inputs were multi-channel time-varying signals and a generalized inner product was used to perform spatio-temporal aggregation of input signals in the kernel. Typical signal samples from various pattern subsets in the sample set were used as kernel center functions, which use morphological distribution characteristics and combination relationships to implicitly express prior knowledge for the signal category. The exponential probability function was used as the activation function to achieve kernel transformation and RBPPN probability output. The RBPPNN is composed of process signal input layers, an RBPPN hidden layer, a pattern layer, and a Softmax classifier developed through stacking. Generalized inner product operations were used to conduct probability similarity measurements of distribution characteristics between process signals. The pattern layer selectivity summed inputs from the RBPPN hidden layer to the pattern layer according to the category of the kernel center function. Its outputs were then used as inputs in the Softmax classifier. The proposed RBPPNN information processing mechanism was extended to the time domain, and through learning time-varying signal training samples, achieved extraction, expression, and information association of time-varying signal characteristics, as well as direct classification. It can improve the deficiencies of existing neural networks, such as a complete large-scale training dataset is needed, and the information processing flow is complex. In this paper, the properties of the RBPPNN are analyzed and a specific learning algorithm is presented which synthesizes dynamic time warping, dynamic C-means clustering, and the mean square error algorithm. A series of 12-lead electrocardiogram (ECG) signals
机译:提出了一种径向基本概率过程神经元(RBPPN)和径向基概率过程神经网络(RBPPNN)模型,融合了应用于时变信号模式分类的先验知识。 RBPPN输入是多通道时变信号,并且广泛的内部产品用于在内核中执行输入信号的时空聚合。来自样本集中的各种图案子集的典型信号样本用作内核中心功能,它使用形态分布特性和组合关系来隐含地表达信号类别的先验知识。指数概率函数用作实现内核变换和RBPPN概率输出的激活功能。 RBPPNN由过程信号输入层,RBPPN隐藏层,图案层和通过堆叠开发的软MAX分类器组成。广义内部产品操作用于对处理信号之间的分布特性进行概率相似度测量。根据内核中心功能的类别,图案层选择性将从RBPPN隐藏层的输入求和为模式层。然后将其输出用作SoftMax分类器中的输入。所提出的RBPNN信息处理机制被扩展到时域,并且通过学习时变信号训练样本,实现了时变信号特性的提取,表达和信息关联,以及直接分类。它可以提高现有神经网络的缺陷,例如需要完整的大规模训练数据集,并且信息处理流程复杂。本文分析了RBPNN的特性,并提出了一种特定的学习算法,其合成动态时间翘曲,动态C均值聚类和均方误差算法。一系列12引线心电图(ECG)信号

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