Research of the two-criteria estimation method for linear regression models

The paper is devoted to the research of the two-criteria estimation method for linear regressions. The first criterion corresponds to the least absolute deviations, the second – to the non-strict ordinary least squares. The implementation of the method requires solving a two-criteria linear programm...

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Main Author: M.P. Bazilevskiy
Format: Article
Language:English
Published: Ural State University of Economics 2025-01-01
Series:Цифровые модели и решения
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Online Access:http://usue-journal.ru/en/issues-2024/70-anglijskij-yazyk/tsmiren/11/524-research-of-the-two-criteria-estimation-method-for-linear-regression-models
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author M.P. Bazilevskiy
author_facet M.P. Bazilevskiy
author_sort M.P. Bazilevskiy
collection DOAJ
description The paper is devoted to the research of the two-criteria estimation method for linear regressions. The first criterion corresponds to the least absolute deviations, the second – to the non-strict ordinary least squares. The implementation of the method requires solving a two-criteria linear programming problem, the solution of which involves the formation of a Pareto set. The main goal of the article was to research how the normalization of the initial variables affects the formation of the Pareto set. For this, two samples were used. The first was created artificially and contains an outlier. The second was formed on the basis of real economic data. In both cases, when normalizing the variables, the Pareto set turned out to be more representative than when working with non-normalized indicators. The example with an outlier illustrates the robustness of the least absolute deviations and the anti-robust ness of the ordinary least squares. It is shown how, based on the predicted values of the explained variable, it is possible to choose the optimal Pareto vertex.
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institution Kabale University
issn 2949-477X
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publisher Ural State University of Economics
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series Цифровые модели и решения
spelling doaj-art-f5a16c256f71479a92e1fab709dfd65e2025-01-07T09:11:57ZengUral State University of EconomicsЦифровые модели и решения2949-477X2782-49342025-01-0134799010.29141/2949-477X-2024-3-4-5Research of the two-criteria estimation method for linear regression modelsM.P. Bazilevskiy 0Irkutsk State Transport University, Irkutsk, Russian FederationThe paper is devoted to the research of the two-criteria estimation method for linear regressions. The first criterion corresponds to the least absolute deviations, the second – to the non-strict ordinary least squares. The implementation of the method requires solving a two-criteria linear programming problem, the solution of which involves the formation of a Pareto set. The main goal of the article was to research how the normalization of the initial variables affects the formation of the Pareto set. For this, two samples were used. The first was created artificially and contains an outlier. The second was formed on the basis of real economic data. In both cases, when normalizing the variables, the Pareto set turned out to be more representative than when working with non-normalized indicators. The example with an outlier illustrates the robustness of the least absolute deviations and the anti-robust ness of the ordinary least squares. It is shown how, based on the predicted values of the explained variable, it is possible to choose the optimal Pareto vertex.http://usue-journal.ru/en/issues-2024/70-anglijskij-yazyk/tsmiren/11/524-research-of-the-two-criteria-estimation-method-for-linear-regression-modelsregression analysisordinary least squaresleast absolute deviationstwo-crite ria estimationlinear programmingrobustnesspareto set
spellingShingle M.P. Bazilevskiy
Research of the two-criteria estimation method for linear regression models
Цифровые модели и решения
regression analysis
ordinary least squares
least absolute deviations
two-crite ria estimation
linear programming
robustness
pareto set
title Research of the two-criteria estimation method for linear regression models
title_full Research of the two-criteria estimation method for linear regression models
title_fullStr Research of the two-criteria estimation method for linear regression models
title_full_unstemmed Research of the two-criteria estimation method for linear regression models
title_short Research of the two-criteria estimation method for linear regression models
title_sort research of the two criteria estimation method for linear regression models
topic regression analysis
ordinary least squares
least absolute deviations
two-crite ria estimation
linear programming
robustness
pareto set
url http://usue-journal.ru/en/issues-2024/70-anglijskij-yazyk/tsmiren/11/524-research-of-the-two-criteria-estimation-method-for-linear-regression-models
work_keys_str_mv AT mpbazilevskiy researchofthetwocriteriaestimationmethodforlinearregressionmodels