Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression Models

When estimating regression models using the least squares method, one of its prerequisites is the lack of autocorrelation in the regression residuals. The presence of autocorrelation in the residuals makes the least-squares regression estimates to be ineffective, and the standard errors of these est...

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Main Author: M. P. Bazilevsky
Format: Article
Language:Russian
Published: MGTU im. N.È. Baumana 2018-08-01
Series:Matematika i Matematičeskoe Modelirovanie
Subjects:
Online Access:https://www.mathmelpub.ru/jour/article/view/102
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spelling doaj-f1b692b1586d4d0d8f794ecdeca018122021-07-28T21:09:07ZrusMGTU im. N.È. BaumanaMatematika i Matematičeskoe Modelirovanie2412-59112018-08-0103132510.24108/mathm.0318.000010297Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression ModelsM. P. Bazilevsky0Irkutsk State Transport University, IrkutskWhen estimating regression models using the least squares method, one of its prerequisites is the lack of autocorrelation in the regression residuals. The presence of autocorrelation in the residuals makes the least-squares regression estimates to be ineffective, and the standard errors of these estimates to be untenable. Quantitatively, autocorrelation in the residuals of the regression model has traditionally been estimated using the Durbin-Watson statistic, which is the ratio of the sum of the squares of differences of consecutive residual values to the sum of squares of the residuals. Unfortunately, such an analytical form of the Durbin-Watson statistic does not allow it to be integrated, as linear constraints, into the problem of selecting informative regressors, which is, in fact, a mathematical programming problem in the regression model. The task of selecting informative regressors is to extract from the given number of possible regressors a given number of variables based on a certain quality criterion.The aim of the paper is to develop and study new criteria for detecting first-order autocorrelation in the residuals in regression models that can later be integrated into the problem of selecting informative regressors in the form of linear constraints. To do this, the paper proposes modular autocorrelation statistic for which, using the Gretl package, the ranges of their possible values and limit values were first determined experimentally, depending on the value of the selective coefficient of auto-regression. Then the results obtained were proved by model experiments using the Monte Carlo method. The disadvantage of the proposed modular statistic of adequacy is that their dependencies on the selective coefficient of auto-regression are not even functions. For this, double modular autocorrelation criteria are proposed, which, using special methods, can be used as linear constraints in mathematical programming problems to select informative regressors in regression models.https://www.mathmelpub.ru/jour/article/view/102autocorrelation of first-order in residualsdurbin-watson statisticsubset selectionmodular autocorrelation statisticdouble modular autocorrelation statisticmonte carlo method
collection DOAJ
language Russian
format Article
sources DOAJ
author M. P. Bazilevsky
spellingShingle M. P. Bazilevsky
Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression Models
Matematika i Matematičeskoe Modelirovanie
autocorrelation of first-order in residuals
durbin-watson statistic
subset selection
modular autocorrelation statistic
double modular autocorrelation statistic
monte carlo method
author_facet M. P. Bazilevsky
author_sort M. P. Bazilevsky
title Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression Models
title_short Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression Models
title_full Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression Models
title_fullStr Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression Models
title_full_unstemmed Research of New Criteria for Detecting First-order Residuals Autocorrelation in Regression Models
title_sort research of new criteria for detecting first-order residuals autocorrelation in regression models
publisher MGTU im. N.È. Baumana
series Matematika i Matematičeskoe Modelirovanie
issn 2412-5911
publishDate 2018-08-01
description When estimating regression models using the least squares method, one of its prerequisites is the lack of autocorrelation in the regression residuals. The presence of autocorrelation in the residuals makes the least-squares regression estimates to be ineffective, and the standard errors of these estimates to be untenable. Quantitatively, autocorrelation in the residuals of the regression model has traditionally been estimated using the Durbin-Watson statistic, which is the ratio of the sum of the squares of differences of consecutive residual values to the sum of squares of the residuals. Unfortunately, such an analytical form of the Durbin-Watson statistic does not allow it to be integrated, as linear constraints, into the problem of selecting informative regressors, which is, in fact, a mathematical programming problem in the regression model. The task of selecting informative regressors is to extract from the given number of possible regressors a given number of variables based on a certain quality criterion.The aim of the paper is to develop and study new criteria for detecting first-order autocorrelation in the residuals in regression models that can later be integrated into the problem of selecting informative regressors in the form of linear constraints. To do this, the paper proposes modular autocorrelation statistic for which, using the Gretl package, the ranges of their possible values and limit values were first determined experimentally, depending on the value of the selective coefficient of auto-regression. Then the results obtained were proved by model experiments using the Monte Carlo method. The disadvantage of the proposed modular statistic of adequacy is that their dependencies on the selective coefficient of auto-regression are not even functions. For this, double modular autocorrelation criteria are proposed, which, using special methods, can be used as linear constraints in mathematical programming problems to select informative regressors in regression models.
topic autocorrelation of first-order in residuals
durbin-watson statistic
subset selection
modular autocorrelation statistic
double modular autocorrelation statistic
monte carlo method
url https://www.mathmelpub.ru/jour/article/view/102
work_keys_str_mv AT mpbazilevsky researchofnewcriteriafordetectingfirstorderresidualsautocorrelationinregressionmodels
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