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JOURNALS // Informatika i Ee Primeneniya [Informatics and its Applications] // Archive

Inform. Primen., 2020 Volume 14, Issue 2, Pages 111–118 (Mi ia670)

This article is cited in 2 papers

Selection of optimal complexity models by methods of nonparametric statistics (on the example of production function models of the regions of the Russian Federation)

I. L. Kirilyuka, O. V. Sen'kob

a Institute of Economics of the Russian Academy of Sciences, 32 Nakhimovskiy Pr., Moscow 117218, Russian Federation
b Federal Research Center “Computer Science and Control” of the Russian Academy of Sciences, 44-2 Vavilov Str., Moscow 119333, Russian Federation

Abstract: The article describes an approach to comparing alternative variants of linear regression models on time series and determining the appropriateness of complicating them (by adding new variables) using several variants of Monte-Carlo methods. The proposed research methods using pseudosampling generation allow taking into account both the effects associated with possible differences of distributions in empirical data from the Gauss distribution and the effects associated with possible nonstationarity of the time series under study. For this purpose, pseudosampling generation is used — time series, which are Gaussian white noise, random walk generation, as well as the permutation test and the bootstrap method. Reliability of the obtained results is estimated using resampling. Applicability of the considered methods is demonstrated by the example of models of investment production functions of regions of the Russian Federation, calculated on the basis of data from the Federal State Statistics Service.

Keywords: Monte-Carlo methods, permutation tests, spurious regression, production functions, model selection, meso level of the economy.

Received: 22.05.2019

DOI: 10.14357/19922264200216



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