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Wavelet Entropy Based Probabilistic Neural Network for Classification

机译:基于小波熵的概率神经网络分类

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Recently, wavelet transform (WT) has been enormously effectual in various scientific fields. As a matter of fact, WT has overcome the FFT in the difficult nature data tackling. A wavelet entropy based probabilistic neural network (PNN) for classification applications is proposed. Specifically, wavelet transform is performed on the original input feature data, and the entropy values of the wavelet decomposition signals are then extracted to use as the input to the PNN classifier. Two benchmark data sets, Breast Cancer and Diabetes, are used to demonstrate the efficiency of our proposed wavelet entropy based PNN (WEPNN) classifier. The test classification rates of 80.3% and 77.0% are achieved respectively for the two data sets using the WEPNN with Shannon entropy. Other published methods are used for comparison. The method is promising. For results accuracy enhancement, large data set might be utilized in the future work.
机译:近年来,小波变换(WT)在各个科学领域都发挥了巨大作用。实际上,WT在困难的自然数据处理中已经克服了FFT。提出了一种基于小波熵的概率神经网络(PNN)用于分类应用。具体地,对原始输入特征数据执行小波变换,然后提取小波分解信号的熵值以用作PNN分类器的输入。乳腺癌和糖尿病这两个基准数据集被用来证明我们提出的基于小波熵的PNN(WEPNN)分类器的效率。使用具有Shannon熵的WEPNN,两个数据集的测试分类率分别达到80.3%和77.0%。其他发布的方法用于比较。该方法是有希望的。为了提高结果的准确性,将来的工作中可能会使用大数据集。

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