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Generative oversampling method (GenOMe) for imbalanced data on apnea detection using ECG data

机译:使用ECG数据进行呼吸暂停检测时数据不平衡的生成式过采样方法(GenOMe)

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One of machine learning problem that is difficult but important to be addressed is imbalanced data where particular data is recessive while the others are dominant. Most of classifiers performance significantly degraded when dealing with imbalanced data. The major approaches to tackle imbalanced data are cost sensitive learning which modifies the classifier and resampling which modifies the data distribution. In this research, we employed generated oversampling method (GenOMe) that generate new data point with a particular distribution as a constraint. We examine three distribution functions: Beta, Gamma, and Gaussian distribution. We use Logistic Regression, Support Vector Machine (SVM), and Naive Bayes as classifier to assure the robustness of GenOMe. The experimental results shows that GenOMe outperforms classification using original data and classification using SMOTe (Synthetic Minority Oversampling Technique) data.
机译:难以解决的机器学习问题之一是要解决的是不平衡数据,其中特定数据是隐性的,而其他数据则占主导地位。在处理不平衡数据时,大多数分类器性能显着降低。解决不平衡数据的主要方法是成本敏感的学习,它修改了修改数据分布的分类器和重采样。在这项研究中,我们使用了产生的过采样方法(基因组),其产生具有特定分布的新数据点作为约束。我们研究了三个分发功能:Beta,Gamma和高斯分布。我们使用Logistic回归,支持向量机(SVM)和Naive Bayes作为分类器以确保基因组的稳健性。实验结果表明,使用Smote(合成少数群体过采样技术)数据使用原始数据和分类,基因组优于分类。

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