A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data

In a linear regression model, the estimation of regression parameters by ordinary least squares method is affected by some anomalous points in the data set. Thus, detection of these abnormal points is one of the essential steps in regression analysis. There are many classical single deletion diagnos...

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Main Authors: Bagheri, Arezoo, Midi, Habshah, Ganjali, Mojtaba, Eftekhari, Samaneh
Format: Article
Language:English
Published: Hikari Ltd. 2010
Online Access:http://psasir.upm.edu.my/id/eprint/12673/
http://psasir.upm.edu.my/id/eprint/12673/1/A%20comparison%20of%20various%20influential%20points%20diagnostic%20methods%20and%20robust%20regression%20approaches.pdf
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author Bagheri, Arezoo
Midi, Habshah
Ganjali, Mojtaba
Eftekhari, Samaneh
author_facet Bagheri, Arezoo
Midi, Habshah
Ganjali, Mojtaba
Eftekhari, Samaneh
author_sort Bagheri, Arezoo
building UPM Institutional Repository
collection Online Access
description In a linear regression model, the estimation of regression parameters by ordinary least squares method is affected by some anomalous points in the data set. Thus, detection of these abnormal points is one of the essential steps in regression analysis. There are many classical single deletion diagnostic measures which may fail to detect strange points due to masking effect. Local influence is an alternative method to evaluate the influence of local departures from assumptions in a proposed model. The main objective of this paper is to obtain the best resistant regression method which is robust to outliers in both the response and the explanatory variables. To achieve this objective, the weight vectors of the most commonly used robust regression techniques, such as the M- and the Generalized M-regressions are studied. A new measure based on the normal curvatures of the likelihood displacement is also proposed for comparing different robust regression methods. A medical data set is reanalyzed to underline that the use of only one alternative detection method or robust regression approach may not be sufficient to detect all influential points or to conclude the best robust method. A Monte Carlo simulation study is performed to confirm the results.
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spelling upm-126732015-09-02T01:27:55Z http://psasir.upm.edu.my/id/eprint/12673/ A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data Bagheri, Arezoo Midi, Habshah Ganjali, Mojtaba Eftekhari, Samaneh In a linear regression model, the estimation of regression parameters by ordinary least squares method is affected by some anomalous points in the data set. Thus, detection of these abnormal points is one of the essential steps in regression analysis. There are many classical single deletion diagnostic measures which may fail to detect strange points due to masking effect. Local influence is an alternative method to evaluate the influence of local departures from assumptions in a proposed model. The main objective of this paper is to obtain the best resistant regression method which is robust to outliers in both the response and the explanatory variables. To achieve this objective, the weight vectors of the most commonly used robust regression techniques, such as the M- and the Generalized M-regressions are studied. A new measure based on the normal curvatures of the likelihood displacement is also proposed for comparing different robust regression methods. A medical data set is reanalyzed to underline that the use of only one alternative detection method or robust regression approach may not be sufficient to detect all influential points or to conclude the best robust method. A Monte Carlo simulation study is performed to confirm the results. Hikari Ltd. 2010 Article PeerReviewed application/pdf en http://psasir.upm.edu.my/id/eprint/12673/1/A%20comparison%20of%20various%20influential%20points%20diagnostic%20methods%20and%20robust%20regression%20approaches.pdf Bagheri, Arezoo and Midi, Habshah and Ganjali, Mojtaba and Eftekhari, Samaneh (2010) A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data. Applied Mathematical Sciences, 4 (25-28). pp. 1367-1386. ISSN 1312-885X; ESSN: 1314-7552 http://www.m-hikari.com/ams/ams-2010/ams-25-28-2010/bagheriAMS25-28-2010.pdf
spellingShingle Bagheri, Arezoo
Midi, Habshah
Ganjali, Mojtaba
Eftekhari, Samaneh
A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data
title A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data
title_full A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data
title_fullStr A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data
title_full_unstemmed A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data
title_short A comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data
title_sort comparison of various influential points diagnostic methods and robust regression approaches: reanalysis of interstitial lung disease data
url http://psasir.upm.edu.my/id/eprint/12673/
http://psasir.upm.edu.my/id/eprint/12673/
http://psasir.upm.edu.my/id/eprint/12673/1/A%20comparison%20of%20various%20influential%20points%20diagnostic%20methods%20and%20robust%20regression%20approaches.pdf