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Robust Functional Supervised Classification for Time Series

机译:时间序列的鲁棒功能监督分类

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We propose using the integrated periodogram to classify time series. The method assigns a new time series to the group that minimizes the distance between the series integrated periodogram and the group mean of integrated periodograms. Local computation of these periodograms allows the application of this approach to nonstationary time series. Since the integrated periodograms are curves, we apply functional data depth-based techniques to make the classification robust, which is a clear advantage over other competitive procedures. The method provides small error rates for both simulated and real data. It improves existing approaches and presents good computational behavior.
机译:我们建议使用积分周期图对时间序列进行分类。该方法为组分配了一个新的时间序列,以最大程度地减少系列积分周期图和积分周期图的组平均值之间的距离。这些周期图的本地计算允许将这种方法应用于非平稳时间序列。由于集成的周期图是曲线,因此我们应用了基于功能数据深度的技术来使分类更加稳健,这是与其他竞争程序相比的明显优势。该方法为模拟数据和真实数据都提供了较小的错误率。它改进了现有方法,并具有良好的计算性能。

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