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Range Based Confusion Matrix for Imbalanced Time Series Classification

机译:不平衡时间序列分类的基于范围的混淆矩阵

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The recent flood of machine generated data allows for the detection of anomalous behaviors in the corresponding systems, something previously impossible. Consequently, the anomaly detection problem has grown in importance in industrial settings. This data often has a time-series nature and when a machine learning approach is used the labels are unbalanced. Classical point-to-point confusion matrices have been found misleading for scoring model performance. We propose an enhanced approach, based on the well-known confusion matrix, to evaluate binary classification on imbalanced time series datasets. This approach is utilized in a project which seeks to predict application failures in servers that provide web services to real customers and it results in improved estimates of classification models.
机译:机器生成数据的最新涌现允许检测相应系统中的异常行为,这在以前是不可能的。因此,异常检测问题在工业环境中变得越来越重要。该数据通常具有时间序列性质,并且当使用机器学习方法时,标签不平衡。已发现经典的点对点混淆矩阵对模型性能评分有误导性。我们提出一种基于众所周知的混淆矩阵的增强方法,以评估不平衡时间序列数据集上的二进制分类。此方法在一个项目中加以利用,该项目旨在预测向实际客户提供Web服务的服务器中的应用程序故障,并导致改进的分类模型估计。

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