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This article is cited in 2 scientific papers (total in 2 papers)
Scientific Part
Computer Sciences
Multi-criteria approach to pair-multiple linear regression models constructing
M. P. Bazilevskiy Irkutsk State Transport University, 15 Chernyshevskogo St., Irkutsk 664074, Russia
Abstract:
A pair-multiple linear regression model which is a synthesis of Deming regression and multiple linear regression model is considered. It is shown that with a change in the type of minimized distance, the pair-multiple regression model transforms smoothly from the pair model into the multiple linear regression model. In this case, pair-multiple regression models retain the ability to interpret the coefficients and predict the values of the explained variable. An aggregated quality criterion of regression models based on four well-known indicators: the coefficient of determination, Darbin – Watson, the consistency of behaviour and the average relative error of approximation is proposed. Using this criterion, the problem of multi-criteria construction of a pair-multiple linear regression model is formalized as a nonlinear programming problem. An algorithm for its approximate solution is developed. The results of this work can be used to improve the overall qualitative characteristics of multiple linear regression models.
Key words:
Deming regression, pair-multiple linear regression model, multi-criteria approach, aggregate criterion, nonlinear programming.
Received: 11.11.2019 Revised: 07.10.2020
Citation:
M. P. Bazilevskiy, “Multi-criteria approach to pair-multiple linear regression models constructing”, Izv. Saratov Univ. Math. Mech. Inform., 21:1 (2021), 88–99
Linking options:
https://www.mathnet.ru/eng/isu877 https://www.mathnet.ru/eng/isu/v21/i1/p88
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