向量自回归在货币政策预测中的应用

A. A. Akylbekov, A. M. Seitkaziyeva, Zh. Sh. Kenzhalina
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引用次数: 0

摘要

本研究的目的是考虑向量自回归方法和模型的理论和实证应用,分析各种宏观经济变量对货币政策模型构建的影响。方法。所使用的研究方法是关于使用向量自回归的经验的概括,因素分析,评估包含15个真实,价格,货币和外部变量的VAR模型的方法。为了评估所分析模型的质量,进行了一系列测试:脉冲响应分析、预测和模拟。本文分析了各因素之间的相互影响,以及对结果的解释,可以进一步为改进货币政策的研究和预测方法提供实用的建议。研究的独创性/价值。本文分析了不同方法在构建向量自回归模型中的优缺点,包括因素的选择和模型中使用的准备。本文考察了2010年至2021年(即引入通胀目标制前后)的观察期,并在不影响2022年冲击的情况下评估了哈萨克斯坦的大流行冲击。发现。所做的工作使向量自回归方法的适用性得到验证,模型的逆预测能力证实了这一说法。本文以哈萨克斯坦为例,对模型的有效性进行了宏观因素评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
APPLICATION OF VECTOR AUTOREGRESSIONS FOR FORECASTING MONETARY POLICY
The purpose of the study is to consider the theoretical and empirical application of methods and models of vector autoregressions to analyze the infl uence of various macroeconomic variables in the construction of a monetary policy model. Methodology . The research methods used are generalization of experience regarding the use of vector autoregressions, factor analysis, methodology for evaluating VAR models containing fi fteen real, price, monetary and external variables. A number of tests were conducted to assess the quality of the analyzed model: impulse response analysis, forecasting and simulations. This article analyzes the infl uence of factors on each other, as well as the interpretation of the results, which can be further used to obtain practical recommendations for improving the methods of research and forecasting monetary policy. Originality / value of the research . The paper analyzes the advantages and disadvantages of diff erent approaches in the construction of vector autoregressive models, both in the selection of factors and their preparation for use in the model. This article examines the observation period from 2010 to 2021, that is, before and after the introduction of the infl ation targeting regime, and the assessment of the pandemic shock in Kazakhstan, without aff ecting the shocks of 2022. Findings. The work carried out made it possible to verify the applicability of vector autoregression methods, this statement is confi rmed by the inverse predictive power of the models. In this paper, the eff ectiveness of the proposed models was evaluated on macro factors in Kazakhstan.
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