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Combining PCA and entropy criterion to build ANN's architecture

机译:结合PCA和熵准则建立ANN的体系结构

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Designing of artificial neural network (ANN or NN)'s architecture is a fundamental problem, which draws researchers' concern. This paper proposes PCA and entropy as a criterion to select neuron and provides a method, PCA-ENN, to build NN. First, according to the similarity or equivalence between decision tree (DT) and NN, PCA-ENN adopts PCA to extract new feature attributes. Second, PCA-ENN selects the best cut point for each new attribute by entropy criterion and selects the best attribute for classification as a neural unit. Then specifies the connection weights between input units and outer inputs by coefficients obtained from PCA and specifies the biases of input units as the best cut points. At the same time, PCA-ENN constructs the hidden and output layer units, and initializes the connection weights of units. PCA-ENN cannot only build architecture of NN effectively, but also make NN's incremental learning possible.
机译:设计人工神经网络(ANN或NN)的体系结构是一个基本问题,引起了研究人员的关注。本文提出了PCA和熵作为选择神经元的标准,并提供了一种PCA-ENN来构建神经网络的方法。首先,根据决策树(DT)与NN之间的相似性或等效性,PCA-ENN采用PCA提取新的特征属性。其次,PCA-ENN通过熵准则为每个新属性选择最佳切入点,并选择分类的最佳属性作为神经单位。然后通过从PCA获得的系数指定输入单元和外部输入之间的连接权重,并将输入单元的偏差指定为最佳切割点。同时,PCA-ENN构造隐藏层和输出层单元,并初始化单元的连接权重。 PCA-ENN不仅可以有效地构建NN的体系结构,而且还可以使NN的增量学习成为可能。

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