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The Fuzzy Misclassification Analysis with Deep Neural Network for Handling Class Noise Problem

机译:深度神经网络的模糊分类错误处理类噪声问题

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Most of the real world data is embedded with noise, and noise can negatively affect the classification learning models which are used to analyse data. Therefore, noisy data should be handled in order to avoid any negative effect on the learning algorithm used to build the analysis model. Deep learning algorithm has shown to outperform general classification algorithms. However, it has undermined by noisy data. This paper proposes a Fuzzy misclassification the analysis with deep neural networks (FAD) to handle the noise in classification ion data. By combining the fuzzy misclassification analysis with the deep neural network, it can improve the classification confidence by better handling the noisy data. The FAD has tested on Ionosphere, Pima, German and Yeast3 datasets by randomly adding 40% of noise to the data. The FAD has shown to consistently provide good results when compared to other noise removal techniques. FAD has outperformed CMTF-SVM by an average of 3.88% in the testing datasets.
机译:现实世界中的大多数数据都嵌入了噪声,噪声会对用于分析数据的分类学习模型产生负面影响。因此,应处理嘈杂的数据,以避免对用于构建分析模型的学习算法产生任何负面影响。深度学习算法已证明优于常规分类算法。但是,嘈杂的数据破坏了它。本文提出了一种使用深度神经网络(FAD)进行模糊错误分类的分析方法,以处理分类离子数据中的噪声。通过将模糊错误分类分析与深度神经网络相结合,可以通过更好地处理嘈杂的数据来提高分类的置信度。 FAD通过将40%的噪声随机添加到电离层,Pima,German和Yeast3数据集进行了测试。与其他噪声消除技术相比,FAD已显示出始终如一的良好效果。在测试数据集中,FAD的性能平均比CMTF-SVM高出3.88%。

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