用因子模型预测土耳其工业生产和通货膨胀

IF 2 Q2 ECONOMICS Central Bank Review Pub Date : 2018-12-01 DOI:10.1016/j.cbrev.2018.11.003
Mahmut Günay
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引用次数: 12

摘要

本文运用大量的国内外指标对工业生产增长和核心通货膨胀进行预测。本文采用因子模型和预测组合两种方法来解决由于数据集不断增加而产生的多维度问题。综合分析了因子模型的预测性能对各种建模选择的敏感性。在此方面,分析了因子提取方法、因子数量、数据聚集水平和预测方程类型对预测效果的影响。此外,还评估了使用特定数据块(如利率)对预测性能的影响。样本外预测连续进行两个周期,以评估预测效果的稳定性。因子模型比双变量预测的组合表现更好,这表明池化信息比池化单个预测更好。
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Forecasting industrial production and inflation in Turkey with factor models

In this paper, industrial production growth and core inflation are forecasted using a large number of domestic and international indicators. Two methods are employed, factor models and forecast combination, to deal with the curse of dimensionality problem stemming from the availability of ever growing data sets. A comprehensive analysis is carried out to understand the sensitivity of the forecast performance of factor models to various modelling choices. In this respect, effects of factor extraction method, number of factors, data aggregation level and forecast equation type on the forecasting performance are analyzed. Moreover, the effect of using certain data blocks such as interest rates on the forecasting performance is evaluated as well. Out-of-sample forecasting exercise is conducted for two consecutive periods to assess the stability of the forecasting performance. Factor models perform better than the combination of bi-variate forecasts which indicates that pooling information improves over pooling individual forecasts.

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来源期刊
Central Bank Review
Central Bank Review ECONOMICS-
CiteScore
5.10
自引率
0.00%
发文量
9
审稿时长
69 days
期刊最新文献
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