Title of article
Robustness properties of a robust partial least squares regression method Original Research Article
Author/Authors
K. Vanden Branden، نويسنده , , M. Hubert، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2004
Pages
13
From page
229
To page
241
Abstract
The presence of multicollinearity in regression data is no exception in real life examples. Instead of applying ordinary regression methods, biased regression techniques such as principal component regression and ridge regression have been developed to cope with such datasets. In this paper, we consider partial least squares (PLS) regression by means of the SIMPLS algorithm. Because the SIMPLS algorithm is based on the empirical variance–covariance matrix of the data and on least squares regression, outliers have a damaging effect on the estimates. To reduce this pernicious effect of outliers, we propose to replace the empirical variance–covariance matrix in SIMPLS by a robust covariance estimator. We derive the influence function of the resulting PLS weight vectors and the regression estimates, and conclude that they will be bounded if the robust covariance estimator has a bounded influence function. Also the breakdown value is inherited from the robust estimator. We illustrate the results using the MCD estimator and the reweighted MCD estimator (RMCD) for low-dimensional datasets. Also some empirical properties are provided for a high-dimensional dataset.
Keywords
Partial Least Squares regression , SIMPLS , Influence function , Minimum covariance determinant , robustness
Journal title
Analytica Chimica Acta
Serial Year
2004
Journal title
Analytica Chimica Acta
Record number
1034215
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