Robust-STP: A Robust Seasonal-trend Decomposition Method for Partial Periodic Time Series

Haidong Xu, Xiaoxia Zhang, Dong Liang, Guoyin Wang
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Abstract

The extraction of trend and seasonal components from time series is essential for tasks such as forecasting and anomaly detection of the data. The existing decomposition methods of time series mainly concentrate on full-period time series, that is, the periodicity of data runs through the whole time series, less effort has been paid on those kinds of time series that with the mixture of periodicity and aperiodicity. However, in the real world, much of the time series appears mostly in a mixture of periodicity and aperiodicity. Based on this consideration, in this paper, we propose a novel robust seasonal-trend decomposition method for partially periodic time series, short for Robust-STP, to fill this research gap. Firstly, we use bilateral filtering and least absolute deviation loss with regularizations to remove noise and relative trends in the data. Secondly, a sliding window based on the dynamic time warping algorithm is employed to locate the interval points between periodic and aperiodic data. Finally, seasonal and trend filters are imposed to extract the final seasonal and trend components, respectively. Experimental results on synthetic and real datasets are proved to the effectiveness of Robust-STP on partial periodic time series.
鲁棒stp:部分周期时间序列的鲁棒季节趋势分解方法
从时间序列中提取趋势和季节成分对于数据的预测和异常检测等任务至关重要。现有的时间序列分解方法主要集中在全周期时间序列上,即数据的周期性贯穿于整个时间序列,而对周期性和非周期性混合的时间序列则关注较少。然而,在现实世界中,许多时间序列大多以周期性和非周期性的混合形式出现。基于此,本文提出了一种新的部分周期时间序列鲁棒季节性趋势分解方法,简称robust - stp,以填补这一研究空白。首先,我们使用双边滤波和最小绝对偏差损失与正则化来去除数据中的噪声和相对趋势。其次,采用基于动态时间规整算法的滑动窗口定位周期和非周期数据之间的间隔点;最后,使用季节和趋势滤波器分别提取最终的季节和趋势分量。在合成数据集和真实数据集上的实验结果证明了鲁棒stp对部分周期时间序列的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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