基于正则化优化的季节性时间序列结构断裂检测

B. Wang, Jie Sun, A. Motter
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引用次数: 6

摘要

现实世界的系统通常是复杂的、动态的和非线性的。从观察到的时间序列中理解系统的动力学是预测和控制系统行为的关键。虽然大多数现有技术默认了某种形式的平稳性或连续性,但通常由于外部干扰或内在动力学的突然变化而引起的突变在时间序列中很常见。结构中断,即时间序列的统计模式发生变化的时间点,对数据分析提出了相当大的挑战。如果不识别这样的断点,同一动态规则将适用于整个观测周期,而错误识别结构断裂可能导致过拟合。本文将时间序列分解为趋势分量和季节分量的问题作为一个优化问题。由于参数数量的随意性,这个问题是不适定的。为了克服这个困难,我们建议增加一个惩罚函数(即正则化项)来解释参数的数量。我们的方法在不需要迭代的情况下同时识别季节性和趋势,并允许可靠地检测结构断裂。该方法被应用于鱼类数量和海面温度的记录数据,在这些数据中,它可以检测到否则会被忽视的结构断裂。这表明我们的方法可以为监测、预测和预防实际系统中的结构变化提供一种通用方法。
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Detecting structural breaks in seasonal time series by regularized optimization
Real-world systems are often complex, dynamic, and nonlinear. Understanding the dynamics of a system from its observed time series is key to the prediction and control of the system's behavior. While most existing techniques tacitly assume some form of stationarity or continuity, abrupt changes, which are often due to external disturbances or sudden changes in the intrinsic dynamics, are common in time series. Structural breaks, which are time points at which the statistical patterns of a time series change, pose considerable challenges to data analysis. Without identification of such break points, the same dynamic rule would be applied to the whole period of observation, whereas false identification of structural breaks may lead to overfitting. In this paper, we cast the problem of decomposing a time series into its trend and seasonal components as an optimization problem. This problem is ill-posed due to the arbitrariness in the number of parameters. To overcome this difficulty, we propose the addition of a penalty function (i.e., a regularization term) that accounts for the number of parameters. Our approach simultaneously identifies seasonality and trend without the need of iterations, and allows the reliable detection of structural breaks. The method is applied to recorded data on fish populations and sea surface temperature, where it detects structural breaks that would have been neglected otherwise. This suggests that our method can lead to a general approach for the monitoring, prediction, and prevention of structural changes in real systems.
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