Forecasting industrial production indices with a new singular spectrum analysis forecasting algorithm

Pub Date : 2023-01-01 DOI:10.4310/21-sii693
Sofia Borodich Suarez, S. Heravi, A. Pepelyshev
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Abstract

Existing time series analysis and forecasting approaches struggle to produce accurate results in application to time series with complex trend, such as those commonly displayed by indices of industrial production (IIPs). In this study, a new version of the Singular Spectrum Analysis (SSA) technique is developed, namely the Separate Trend and Seasonality (SSA-STS) forecasting algorithm. Its performance is compared to those of benchmark, classical times series forecasting methods, including Basic SSA (the core version of SSA), ARIMA, Exponential Smoothing (ETS) and Neural Network (NN). The methods in this study are applied to both simulated and real data. The latter includes twenty four monthly series of seasonally unadjusted IIPs of various sectors for the UK, Germany and France. Using the out-of-sample forecasts, the results of this newly developed SSA-STS algorithm were compared to the other aforemen-tioned forecasting schemes by the means of pooled Root-Mean-Square-Error (RMSE). The pooling is done based on the number of steps ahead the forecasts extend, allowing for the performance of the methods to be evaluated on short and long horizons. The Kolmogorov-Smirnov Predictive Accuracy (KSPA) statistical test is applied to certify whether the errors produced by SSA-STS are statistically significantly smaller than those of all the benchmark methods. Since this new technique is based on separate trend and seasonality forecasting, it overcomes the difficulties in forecasting series with complex trends and seasonality, thus demonstrating a clear advantage over other methods in such particular cases.
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一种新的奇异谱分析预测算法预测工业生产指标
现有的时间序列分析和预测方法在应用于工业生产指数等具有复杂趋势的时间序列时,难以得到准确的结果。本文提出了一种新的奇异谱分析(SSA)预测算法,即SSA- sts预测算法。将其性能与基准、经典时间序列预测方法(包括Basic SSA (SSA的核心版本)、ARIMA、指数平滑(ETS)和神经网络(NN))进行了比较。本研究的方法在模拟和实际数据中都得到了应用。后者包括英国、德国和法国各行业24个月的未经季节性调整的国内生产总值。利用样本外预测结果,通过混合均方根误差(RMSE)将新开发的SSA-STS算法的预测结果与上述其他预测方案进行比较。池化是基于预测扩展前的步数完成的,允许在短期和长期范围内评估方法的性能。采用Kolmogorov-Smirnov Predictive Accuracy (KSPA)统计检验验证SSA-STS方法产生的误差是否在统计学上显著小于所有基准方法的误差。由于这种新技术是基于趋势和季节性的独立预测,克服了预测具有复杂趋势和季节性序列的困难,因此在这种特殊情况下比其他方法具有明显的优势。
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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