SWS Academic Research eLibraryEarth & Planetary Sciences

Scholarly record

USING ROBUST REGRESSION METHODS FOR IMPROVE THE ACCURACY OF THE ESTIMATING OF OBSERVATIONAL MODELS PARAMETERS

Sergey Demin

First published: 2018-06-20https://doi.org/10.5593/sgem2018/2.1/s07.105View metrics

Abstract

Development of information and computer technology is a factor in increased use of statistical methods in all sphere of action (geology, geophysics, ecology, astronomy and many others). Regression analysis (RA) is widely used in the prediction and assessment of model parameters. For many years the ordinary least squares estimation method (LSE, OLS), a computational scheme of RA, and its generalizations are widely used in practice. The disadvantage of the classical scheme of RA, is that with the compliance LSE assumptions, are not verified, in consequence condition which the model can fail to match observations. Most authors of books on regression analysis are inclined to believe that it is necessary to check execution the conditions of RA and in case of breach of the use of alternative computational schemes. In the present paper an approach of the additive regression model, based on special software and provided for the automatic operation model, verification of compliance with the assumptions of RA ? LSE and adaptation in the case of violations, is presented. The method of joint solution of the LSE estimation in violation of the assumptions about the normality of error distribution and the independence of the covariates (the absence of multicollinearity) are proposed. Estimation methods that take into account the existence of В«grave errorВ» and allowing at the same time accurately enough to determine the parameter estimates are called robust or stable. Develop sustainable methods of estimating was motivated to improve existing schemes LSE so that emissions have the least possible impact on the final results of the evaluation. A large loss of efficiency LSE ? count occurs in the presence of even a small fraction of large emissions. In such situations it is necessary to use robust estimation methods that significantly reduce the harmful effects of high emissions estimate and to obtain an acceptable final assessment required parameters. If the condition is violated the independence of the covariates, there is a serious problem common to many methods of estimation. To solve this problem is currently used methods of В«Ridge regressionВ» and В«RegularizationВ». The study our aims to improve the accuracy of estimating the model parameters and prognosis in the presence of multicollinearity and outliers on the basis of sustainable ridge estimation. Based on the goals, accomplish three tasks: a) the synthesis algorithm of the method of sustainable ridge estimation, adapted together to marked disturbances; b) the software implementation of the new method; c) the testing the program on empirical data.

Publication Impact Profile

PlumX
  • Captures
  • Mendeley - Readers: 3

Publication details

Title
USING ROBUST REGRESSION METHODS FOR IMPROVE THE ACCURACY OF THE ESTIMATING OF OBSERVATIONAL MODELS PARAMETERS
Authors
Sergey Demin
Proceedings
SGEM International Multidisciplinary Scientific GeoConference EXPO Proceedings; 18th International Multidisciplinary Scientific GeoConference SGEM2018, Informatics, Geoinformatics and Remote Sensing
Publisher
STEF92 Technology
Year
2018
Pages
829-836
SWS Citekey
Demin20187829836
ISSN
1314-2704
ISBN
978-619-7408-39-3
Language
en
Publication type
Conference Paper
Keywords
References0
0references registered for this publication

Structured references will appear here after the reference import pass. The count is preserved now so the scholarly record is not incomplete.

View or Download full articleAccess options
Full paper accessChoose SWS login, librarian support, or instant article download.

SWS access login

Login as SWS Scientific Committee

Authors and approved SWS contributors will read and export their own linked papers after identity matching by SWS profile, email and SGEM GlobalID.

For librarian assistance: [email protected]

Purchase Instant Access

48-hour online accessComing soon
Online-only accessComing soon
Download the full article in PDF formatEUR 35
  • Article can be downloaded after successful payment.
  • Article may be used according to SWS library access terms.
  • Article cannot be redistributed.
Get full paper

Back to publication list