SSA-Deep Learning Forecasting Methodology with SMA and KF Filters and Residual Analysis

J. Frausto-Solís, José Christian de Jesús Galicia-González, J. González-Barbosa, Guadalupe Castilla-Valdez, J. Sánchez-Hernández
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Abstract

Accurate forecasting remains a challenge, even with advanced techniques like deep learning (DL), ARIMA, and Holt–Winters (H&W), particularly for chaotic phenomena such as those observed in several areas, such as COVID-19, energy, and financial time series. Addressing this, we introduce a Forecasting Method with Filters and Residual Analysis (FMFRA), a hybrid methodology specifically applied to datasets of COVID-19 time series, which we selected for their complexity and exemplification of current forecasting challenges. FMFFRA consists of the following two approaches: FMFRA-DL, employing deep learning, and FMFRA-SSA, using singular spectrum analysis. This proposed method applies the following three phases: filtering, forecasting, and residual analysis. Initially, each time series is split into filtered and residual components. The second phase involves a simple fine-tuning for the filtered time series, while the third phase refines the forecasts and mitigates noise. FMFRA-DL is adept at forecasting complex series by distinguishing primary trends from insufficient relevant information. FMFRA-SSA is effective in data-scarce scenarios, enhancing forecasts through automated parameter search and residual analysis. Chosen for their geographical and substantial populations and chaotic dynamics, time series for Mexico, the United States, Colombia, and Brazil permitted a comparative perspective. FMFRA demonstrates its efficacy by improving the common forecasting performance measures of MAPE by 22.91%, DA by 13.19%, and RMSE by 25.24% compared to the second-best method, showcasing its potential for providing essential insights into various rapidly evolving domains.
利用 SMA 和 KF 滤波器和残差分析的 SSA-深度学习预测方法
即使采用深度学习 (DL)、ARIMA 和 Holt-Winters (H&W) 等先进技术,准确预测仍然是一项挑战,尤其是对于混沌现象,例如在 COVID-19、能源和金融时间序列等多个领域观察到的混沌现象。为了解决这个问题,我们引入了滤波和残差分析预测方法(FMFRA),这是一种专门应用于 COVID-19 时间序列数据集的混合方法。FMFRA 包括以下两种方法:FMFRA-DL 采用深度学习,FMFRA-SSA 采用奇异谱分析。该拟议方法分为以下三个阶段:过滤、预测和残差分析。最初,每个时间序列被分成滤波部分和残差部分。第二阶段是对滤波后的时间序列进行简单的微调,而第三阶段则是完善预测和减少噪声。FMFRA-DL 通过区分主要趋势和不充分的相关信息,擅长预测复杂的序列。FMFRA-SSA 在数据稀缺的情况下非常有效,可通过自动参数搜索和残差分析增强预测效果。墨西哥、美国、哥伦比亚和巴西的时间序列因其地理位置、人口数量和混沌动态而被选中,以便进行比较。与第二好的方法相比,FMFRA 的 MAPE 提高了 22.91%,DA 提高了 13.19%,RMSE 提高了 25.24%,从而证明了它在为各种快速发展的领域提供重要见解方面的潜力。
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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