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Sparse least trimmed squares regression for analyzing high-dimensional large data sets

Tijdschriftbijdrage - Tijdschriftartikel

Sparse model estimation is a topic of high importance in modern data analysis due to the increasing availability of data sets with a large number of variables. Another common problem in applied statistics is the presence of outliers in the data. This paper combines robust regression and sparse model estimation. A robust and sparse estimator is introduced by adding an L1 penalty on the coefficient estimates to the well-known least trimmed squares (LTS) estimator. The breakdown point of this sparse LTS estimator is derived, and a fast algorithm for its computation is proposed. In addition, the sparse LTS is applied to protein and gene expression data of the NCI-60 cancer cell panel. Both a simulation study and the real data application show that the sparse LTS has better prediction performance than its competitors in the presence of leverage points.
Tijdschrift: Annals of Applied Statistics
ISSN: 1932-6157
Issue: 1
Volume: 7
Pagina's: 226 - 248
Jaar van publicatie:2013
BOF-keylabel:ja
IOF-keylabel:ja
BOF-publication weight:1
CSS-citation score:4
Auteurs:International
Authors from:Higher Education
Toegankelijkheid:Open