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首页> 外文期刊>Journal of applied statistics >Vector and recurrent singular spectrum analysis: which is better at forecasting?
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Vector and recurrent singular spectrum analysis: which is better at forecasting?

机译:向量和循环奇异频谱分析:哪个在预测上更好?

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Singular spectrum analysis (SSA) is an increasingly popular and widely adopted filtering and forecasting technique which is currently exploited in a variety of fields. Given its increasing application and superior performance in comparison to other methods, it is pertinent to study and distinguish between the two forecasting variations of SSA. These are referred to as Vector SSA (SSA-V) and Recurrent SSA (SSA-R). The general notion is that SSA-V is more robust and provides better forecasts than SSA-R. This is especially true when faced with time series which are non-stationary and asymmetric, or affected by unit root problems, outliers or structural breaks. However, currently there exists no empirical evidence for proving the above notions or suggesting that SSA-V is better than SSA-R. In this paper, we evaluate out-of-sample forecasting capabilities of the optimised SSA-V and SSA-R forecasting algorithms via a simulation study and an application to 100 real data sets with varying structures, to provide a statistically reliable answer to the question of which SSA algorithm is best for forecasting at both short and long run horizons based on several important criteria.
机译:奇异频谱分析(SSA)是一种越来越流行且被广泛采用的滤波和预测技术,目前已在各个领域中使用。鉴于与其他方法相比,它的应用不断增加且性能优越,因此有必要研究和区分SSA的两种预测变化。这些被称为向量SSA(SSA-V)和循环SSA(SSA-R)。一般的想法是,SSA-V比SSA-R更强大,并且提供更好的预测。面对非平稳且不对称的时间序列,或受单位根问题,离群值或结构破坏影响的时间序列时,尤其如此。但是,目前尚无经验证据可证明上述观点或暗示SSA-V比SSA-R更好。在本文中,我们通过模拟研究和对具有不同结构的100个真实数据集的应用,评估了优化的SSA-V和SSA-R预测算法的样本外预测能力,从而为该问题提供了统计上可靠的答案基于几个重要标准,其中哪种SSA算法最适合短期和长期预测。

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