为季度时间序列计算月值:瑞士商业周期数据的应用

Q3 Economics, Econometrics and Finance
Klaus Abberger, Michael Graff, Oliver Müller, Boriss Siliverstovs
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引用次数: 0

摘要

摘要本文比较了几种处理高频数据缺失问题的算法。我们参考瑞士每月和每季度的商业趋势调查数据。有各种各样的插值算法。为了评估不同的方法,我们将它们应用于事实上是每月的系列,从中我们通过从每个季度删除三个数据点中的两个来创建季度数据。同时,月序列是为多变量插值算法提供更高频率信息的理想选择。有了这组指标,我们对月值进行了估算,采用了两种单变量和四种多变量算法。然后,我们通过将估算的月度数据与实际值进行比较,来运行预测准确性的测试。最后,我们看一下从季度调查问题中得出的关于公司产能利用率的月度序列与反映瑞士商业周期的其他月度数据的一致性。结果表明,基于Chow和Lin方法的算法,在变量预选过程中进行修正,可以获得最精确的估算结果,其次是标准的Chow-Lin算法,然后是多元回归。三次样条和EM算法都没有被证明有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Imputing Monthly Values for Quarterly Time Series: An Application Performed with Swiss Business Cycle Data
Abstract This paper compares algorithms to deal with the problem of missing values in higher frequency data. We refer to Swiss business tendency survey data at monthly and quarterly frequency. There is a wide range of imputation algorithms. To evaluate the different approaches, we apply them to series that are de facto monthly, from which we create quarterly data by deleting two out of three data points from each quarter. At the same time, the monthly series are ideal to deliver higher frequency information for multivariate imputation algorithms. With this set of indicators, we conduct imputations of monthly values, resorting to two univariate and four multivariate algorithms. We then run tests of forecasting accuracy by comparing the imputed monthly data with the actual values. Finally, we take a look at the congruence of an imputed monthly series from the quarterly survey question on firms’ capacity utilisation with other monthly data reflecting the Swiss business cycle. The results show that an algorithm based on the Chow and Lin approach, amended with a variable pre-selection procedure, delivers the most precise imputations, closely followed by the standard Chow-Lin algorithm and then multiple regression. The cubic spline and the EM algorithm do not prove useful.
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来源期刊
Journal of Business Cycle Research
Journal of Business Cycle Research Economics, Econometrics and Finance-Finance
CiteScore
1.50
自引率
0.00%
发文量
15
期刊介绍: The Journal of Business Cycle Research promotes the exchange of knowledge and information on theoretical and empirical aspects of economic fluctuations. The range of topics encompasses the methods, analysis, measurement, modeling, monitoring, or forecasting of cyclical fluctuations including but not limited to: business cycles, financial cycles, credit cycles, price fluctuations, sectoral cycles, regional business cycles, international business cycles, the coordination and interaction of cycles, their implications for macroeconomic policy coordination, fiscal federalism and optimal currency areas, or the conduct of monetary policy; as well as statistical approaches to the development of short-term economic statistics and indicators; business tendency, investment, and consumer surveys; use of survey data or cyclical indicators for business cycle analysis. The journal targets both theoretical and applied economists and econometricians in academic research on economic fluctuations, as well as researchers in central banks and other institutions engaged in economic forecasting and empirical modeling. The Journal of Business Cycle Research is the successor to the OECD Journal: Journal of Business Cycle Measurement and Analysis which was published by the OECD and CIRET from 2004 to 2015. Cited as: J Bus Cycle Res
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