In this paper, an optimized multivariate singular spectrum analysis (MSSA) approach is proposed to find leading indicators of cross-industry relations between 24 monthly, seasonally unadjusted industrial production (IP) series for German, French, and UK economies. Both recurrent and vector forecasting algorithms of horizontal MSSA (HMSSA) are considered. The results from the proposed multivariate approach are compared with those obtained via the optimized univariate singular spectrum analysis (SSA) forecasting algorithm to determine the statistical significance of each outcome. The data are rigorously tested for normality, seasonal unit root hypothesis, and structural breaks. The results are presented such that users can not only identify the most appropriate model based on the aim of the analysis, but also easily identify the leading indicators for each IP variable in each country. Our findings show that, for all three countries, forecasts from the proposed MSSA algorithm outperform the optimized SSA algorithm in over 70% of cases. Accordingly, this new approach succeeds in identifying leading indicators and is a viable option for selecting the SSA choices L and r, which minimizes a loss function.
CITATION STYLE
Silva, E. S., Hassani, H., & Heravi, S. (2018). Modeling European industrial production with multivariate singular spectrum analysis: A cross-industry analysis. Journal of Forecasting, 37(3), 371–384. https://doi.org/10.1002/for.2508
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