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引用次数: 17
摘要
通货膨胀预测是一个重要的现实问题。本文提出了俄罗斯使用几种基本机器学习方法的解决方案:LASSO, Ridge, Elastic Net, Random Forest和Boosting。尽管这些方法在21世纪初就已经存在,但在很长一段时间里,它们在与通胀预测相关的专业文献中几乎没有被注意到,尤其是俄罗斯的通胀预测。本文是将机器学习方法应用于俄罗斯通货膨胀预测的首次尝试之一。目前的实证研究表明,随机森林模型和Boosting模型在通胀预测方面至少与Random Walk和自回归等更传统的模型一样好。本文的主要结果是确认了使用机器学习方法更准确地预测俄罗斯通货膨胀的可能性。
Inflation Forecasting Using Machine Learning Methods
Inflation forecasting is an important practical problem. This paper proposes a solution to this problem for Russia using several basic machine learning methods: LASSO, Ridge, Elastic Net, Random Forest, and Boosting. Despite the fact that these methods already existed in the early 2000s, for a long time they remained almost unnoticed in the professional literature related to the forecasting of inflation in general, and Russian inflation in particular. This paper is one of the first attempts to apply machine learning methods to the forecasting of inflation in Russia. The present empirical study demostrates that the Random Forest model and the Boosting model are at least as good at inflation forecasting as more traditional models, such as Random Walk and autoregression. The main result of this paper is the confirmation of the possibility of more accurate forecasting of inflation in Russia using machine learning methods.