Random Forest as a Model for Czech Forecasting

IF 0.6 4区 经济学 Q4 ECONOMICS Prague Economic Papers Pub Date : 2021-02-10 DOI:10.18267/J.PEP.765
Kateřina Gawthorpe
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引用次数: 1

Abstract

Random forest models have recently gained popularity for economic forecasting. Earlier studies demonstrated their potential to provide early warnings of recession and serve as a competitive method to older prediction models. This study offers the first evaluation of the random forest forecast for the Czech economy. The one-step-ahead forecasting results show high accuracy on the Czech data and are proven to outperform forecasts from the Czech Ministry of Finance and the Czech National Bank. The following multi-step random forest forecast, estimated for the next four quarters, shows results similar to those from the central institutions. The main difference stems from the household and industrial confidence variables, which significantly impact on the random forest forecast. The variable-importance analysis further emphasizes the soft variables as valuable determinants for Czech forecasting. Overall, the findings motivate other forecasters to exercise this method.
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随机森林作为捷克预测模型
随机森林模型最近在经济预测中越来越受欢迎。早期的研究表明,它们有可能提供经济衰退的早期预警,并作为一种与旧预测模型相竞争的方法。本研究首次对捷克经济的随机森林预测进行了评估。提前一步的预测结果显示了捷克数据的高准确性,并被证明优于捷克财政部和捷克国家银行的预测。以下对未来四个季度的多步骤随机森林预测显示了与中央机构类似的结果。主要差异源于家庭和行业信心变量,这些变量对随机森林预测有显著影响。变量重要性分析进一步强调软变量是捷克预测的宝贵决定因素。总的来说,这些发现激励了其他预测者采用这种方法。
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CiteScore
1.30
自引率
14.30%
发文量
14
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