N.A. Moiseev

Plekhanov Russian University of Economics, Moscow, 117997 Russia

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Abstract

A parametric approach to forecasting vectors of macroeconomic indicators, which incorporates functional dependencies between them, has been considered in this paper. As it is possible to functionally bind together most indicators, we believe that this information can help to substantially decrease their forecast error. In this paper, we have proposed to readjust the traditionally obtained forecasts given the known analytical form of the relationship between the considered indicators by the maximum likelihood method. We have also derived a standard form of the readjusted probability density function for each analyzed indicator by normalizing its marginal distribution. In order to prove the efficiency of the proposed method, an empirical out-of-sample investigation has been carried out regarding a simple example for such macroeconomic indicators as gross domestic product (GDP), GDP deflator, and GDP in constant prices.

Keywords: regression analysis, GDP, inflation, monetary base, maximum likelihood method, probability density function, functional dependencies of macroeconomic indicators

Acknowledgements. The study was supported by the Russian Foundation for Basic Research (project no. 18-310-20008).

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Recieved

December 8, 2017

  

For citation: Moiseev N.A. Improving the accuracy of macroeconomic time series forecast by incorporating functional dependencies between them. Uchenye Zapiski Kazanskogo Universiteta. Seriya Fiziko-Matematicheskie Nauki, 2018, vol. 160, no. 2, pp. 350–356.

 

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