Title of article :
The performance of diagnostic-robust generalized potentials for the identification of multiple high leverage points in linear regression
Author/Authors :
M. Habshaha*، نويسنده , , M. R. Norazanb & A. H.M. Rahmatullah ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2009
Pages :
14
From page :
507
To page :
520
Abstract :
Leverage values are being used in regression diagnostics as measures of influential observations in the $X$-space. Detection of high leverage values is crucial because of their responsibility for misleading conclusion about the fitting of a regression model, causing multicollinearity problems, masking and/or swamping of outliers, etc. Much work has been done on the identification of single high leverage points and it is generally believed that the problem of detection of a single high leverage point has been largely resolved. But there is no general agreement among the statisticians about the detection of multiple high leverage points. When a group of high leverage points is present in a data set, mainly because of the masking and/or swamping effects the commonly used diagnostic methods fail to identify them correctly. On the other hand, the robust alternative methods can identify the high leverage points correctly but they have a tendency to identify too many low leverage points to be points of high leverages which is not also desired. An attempt has been made to make a compromise between these two approaches. We propose an adaptive method where the suspected high leverage points are identified by robust methods and then the low leverage points (if any) are put back into the estimation data set after diagnostic checking. The usefulness of our newly proposed method for the detection of multiple high leverage points is studied by some well-known data sets and Monte Carlo simulations.
Keywords :
robust Mahalanobis distance , masking , minimum volume ellipsoid , group deletion , Monte Carlo simulation , diagnostic-robust generalized potentials , high leverage points
Journal title :
JOURNAL OF APPLIED STATISTICS
Serial Year :
2009
Journal title :
JOURNAL OF APPLIED STATISTICS
Record number :
712311
Link To Document :
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