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MOGT: Oversampling with a parsimonious mixture of Gaussian trees model for imbalanced time-series classification

机译:MOGT:使用高斯树模型的简约混合进行过采样以实现不平衡的时间序列分类

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We propose a novel framework of using a parsimonious statistical model, known as mixture of Gaussian trees, for modelling the possibly multi-modal minority class to solve the problem of imbalanced time-series binary classification. By exploiting the fact that close-by time points are highly correlated, our model significantly reduces the number of covariance parameters to be estimated from O(d2) to O(Ld), L denotes the number of mixture components and d is the dimension. Thus our model is particularly effective for modelling high-dimensional time-series with limited number of instances in the minority positive class. We conduct extensive classification experiments based on several well-known time-series datasets (both single-and multi-modal) by first randomly generating synthetic instances from our learned mixture model to correct the imbalance. We then compare our results to several state-of-the-art oversampling techniques and the results demonstrate that when our proposed model is used, the same support vector machines classifier achieves much better classification accuracy across the range of datasets. In fact, the proposed method achieves the best average performance 27 times out of 30 multi-modal datasets according to the F-value metric.
机译:我们提出了一种使用简约统计模型(称为高斯树混合模型)的新颖框架,用于对可能的多模式少数类进行建模,以解决时间序列二元分类不平衡的问题。通过利用临近时间点高度相关这一事实,我们的模型显着减少了要从O(d 2 )估计为O(Ld)的协方差参数的数量,L表示混合成分,d为尺寸。因此,我们的模型对于在少数阳性类别中使用有限数量的实例来建模高维时间序列特别有效。我们首先根据学习到的混合模型随机生成合成实例,以纠正不平衡,然后基于几个众所周知的时间序列数据集(单模式和多模式)进行广泛的分类实验。然后,我们将结果与几种最新的过采样技术进行比较,结果表明,使用我们提出的模型时,相同的支持向量机分类器可以在整个数据集范围内实现更好的分类精度。实际上,根据F值指标,该方法在30个多模态数据集中可获得27倍的最佳平均性能。

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