基于奇异谱分析矢量的结构性断裂建模的状态依赖模型:印度尼西亚出口预测

Yoga Sasmita, Heri Kuswanto, D. Prastyo
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引用次数: 0

摘要

标准的时间序列建模要求模型参数随时间变化保持稳定。模型参数的不稳定性往往由结构断裂引起,从而形成非线性模型。状态依赖模型(SDM)是非线性建模中一种更通用、更灵活的方案。另一方面,时间序列数据通常表现出多种频率成分,如趋势、季节性、周期和噪声。在预测过程中,可以使用奇异频谱分析法(SSA)对这些频率成分进行优化。此外,SSA 中使用最广泛的两种方法是线性递归公式(SSAR)和矢量(SSAV)。与 SSAR 相比,SSAV 具有更好的准确性和鲁棒性,尤其是在处理结构断裂时。因此,本研究提出用 SDM 方法对 SSAV 系数建模,以处理结构断点,称为 SDM-SSAV。SDM 使用扩展卡尔曼滤波器(EKF)递归更新 SSAV 系数,以适应不同时间和不同状态。印尼出口数据的经验结果和模拟研究表明,SDM-SSAV 的准确性优于 SSAR、SSAV、SDM-SSAR、混合 ARIMA-LSTM 和 VARI。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
State-Dependent Model Based on Singular Spectrum Analysis Vector for Modeling Structural Breaks: Forecasting Indonesian Export
Standard time-series modeling requires the stability of model parameters over time. The instability of model parameters is often caused by structural breaks, leading to the formation of nonlinear models. A state-dependent model (SDM) is a more general and flexible scheme in nonlinear modeling. On the other hand, time-series data often exhibit multiple frequency components, such as trends, seasonality, cycles, and noise. These frequency components can be optimized in forecasting using Singular Spectrum Analysis (SSA). Furthermore, the two most widely used approaches in SSA are Linear Recurrent Formula (SSAR) and Vector (SSAV). SSAV has better accuracy and robustness than SSAR, especially in handling structural breaks. Therefore, this research proposes modeling the SSAV coefficient with an SDM approach to take structural breaks called SDM-SSAV. SDM recursively updates the SSAV coefficient to adapt over time and between states using an Extended Kalman Filter (EKF). Empirical results with Indonesian Export data and simulation studies show that the accuracy of SDM-SSAV outperforms SSAR, SSAV, SDM-SSAR, hybrid ARIMA-LSTM, and VARI.
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