A Random Forest-based Approach to Combining and Ranking Seasonality Tests

Q3 Mathematics
Daniel Ollech, Karsten Webel
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引用次数: 1

Abstract

Abstract Virtually every seasonal adjustment software includes an ensemble of tests for assessing whether a given time series is in fact seasonal and hence a candidate for seasonal adjustment. However, such tests are certain to produce either agreeing or conflicting results, raising the questions how to identify the most accurate tests and how to aggregate the results in the latter case. We suggest a novel random forest-based approach to answer these questions. We simulate seasonal and non-seasonal ARIMA processes that are representative of the macroeconomic time series analysed regularly by the Bundesbank. Treating the time series’ seasonal status as a classification problem, we use the p-values of the seasonality tests implemented in the seasonal adjustment software JDemetra+ as predictors to train conditional random forests on the simulated data. We show that this aggregation approach avoids the size distortions of the JDemetra+ tests without sacrificing too much power compared to the most powerful test. We also find that the modified QS and Friedman tests are the most accurate ones in the considered ensemble.
基于随机森林的季节性检验组合和排序方法
摘要几乎每个季节性调整软件都包括一组测试,用于评估给定的时间序列是否真的是季节性的,因此是否是季节性调整的候选者。然而,这种测试肯定会产生一致或冲突的结果,这就提出了如何确定最准确的测试以及在后一种情况下如何汇总结果的问题。我们提出了一种新的基于随机森林的方法来回答这些问题。我们模拟了代表联邦银行定期分析的宏观经济时间序列的季节性和非季节性ARIMA过程。将时间序列的季节状态视为一个分类问题,我们使用季节调整软件JDemetra+中实施的季节性测试的p值作为预测因子,在模拟数据上训练条件随机森林。我们表明,与最强大的测试相比,这种聚合方法避免了JDemetra+测试的大小失真,而不会牺牲太多的功率。我们还发现,在所考虑的集合中,修改的QS和Friedman检验是最准确的。
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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来源期刊
Journal of Econometric Methods
Journal of Econometric Methods Economics, Econometrics and Finance-Economics and Econometrics
CiteScore
2.20
自引率
0.00%
发文量
7
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