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A Novel Method of AOT Evaluation for Change-Point Detection on Synthetic Time-series

机译:合成时间序列变化点检测的AOT评估新方法

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On the basis of the empirical ROC (Receiver Operating Characteristic) analysis, we propose a new AOT (Area out of Triangle) method for evaluating a change-point detection model. In this AOT method, we borrow the conceptions of ROC analysis and take the area out of a triangle formed by TPR (True Positive Rate) and FPR (False Positive rate), as a measurement of the search space during change-point detection on multiple time-series samples. Based on synthetic time-series test groups, the proposed AOT is applied to evaluate the different KS, T and SSA change-point detection models. In terms of AOT and other computation time, hit rate and accuracy measurements, the simulated studies indicate that our AOT can efficiently evaluate the search space for different change-point detection models on the left, middle and right boundaries in test sample groups respectively. Especially, the results suggest that the KS needs much smaller values of search space, computation time, and has much better search capability and search efficiency than T and SSA.
机译:在经验性ROC(接收机操作特征)分析的基础上,我们提出了一种新的AOT(三角形区域)用于评估变化点检测模型的方法。在这种AOT方法中,我们借用ROC分析的概念,并将区域从TPR(真正阳性率)和FPR(假阳性率)形成外,作为在多个变更点检测期间搜索空间的测量值时间序列样本。基于合成时间序列测试组,应用了所提出的AOT来评估不同的KS,T和SSA变化点检测模型。在AOT和其他计算时间,命中率和准确度测量方面,模拟研究表明,我们的AOT可以分别有效地评估测试样本组中左侧,中间和右边界的不同变化点检测模型的搜索空间。特别是,结果表明,KS需要更小的搜索空间,计算时间,并且具有比T和SSA更好的搜索能力和搜索效率。

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