Robust linear regression taking into account errors in the predictor and response variables

We developed a robust regression technique that is a generalization of the least median of squares (LMS) technique to the field in which the errors in both the predictor and the response variables are taken into account. This simple generalization is limited in the sense that the resulting straight...

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Bibliographic Details
Published inAnalyst (London) Vol. 126; no. 7; pp. 1113 - 1117
Main Authors DEL RIO, F. Javier, RIU, Jordi, RIUS, F. Xavier
Format Journal Article
LanguageEnglish
Published Cambridge Royal Society of Chemistry 01.01.2001
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Summary:We developed a robust regression technique that is a generalization of the least median of squares (LMS) technique to the field in which the errors in both the predictor and the response variables are taken into account. This simple generalization is limited in the sense that the resulting straight line is found by using only two points from the initial data set. In this way a simulation step is added by using the Monte Carlo method to generate the best robust regression line. We call this new technique 'bivariate least median of squares' (BLMS), following the notation of the LMS method. We checked the robustness of the new regression technique by calculating its breakdown point, which was 50%. This confirms the robustness of the BLMS regression line. In order to show its applicability to the chemical field we tested it on simulated data sets and real data sets with outliers. The BLMS robust regression line was not affected by many types of outlying points in the data sets.
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ISSN:0003-2654
1364-5528
DOI:10.1039/b100725o