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D-optimal design methods for robust estimation of multivariate location and scatter

✍ Scribed by Wendy L. Poston; Edward J. Wegman; Jeffrey L. Solka


Publisher
Elsevier Science
Year
1998
Tongue
English
Weight
175 KB
Volume
73
Category
Article
ISSN
0378-3758

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✦ Synopsis


Using ideas and techniques from related disciplines frequently proves productive and often yields new insights and methods. In this paper, a method from experimental design is applied to the robust estimation of multivariate location and scatter. In particular, the procedure of determining discrete D-optimal designs is applied to the problem of ΓΏnding the robust estimator called the minimum volume ellipsoid (MVE). The objective of the D-optimal design problem is to select h points to include in the design from a set of n candidate points such that the determinant of the information matrix is maximized. To calculate the MVE, a subset of h points must be selected where the volume of the ellipsoid covering them is the minimum over all possible subsets of size h. We demonstrate the relationship of these optimization problems and propose a technique to select the subset of points for both applications. The subset selection method is applied to several regression data sets where the true MVE estimate is known.


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A robust and efficient adaptive reweight
✍ Daniel Gervini πŸ“‚ Article πŸ“… 2003 πŸ› Elsevier Science 🌐 English βš– 306 KB

This article proposes a reweighted estimator of multivariate location and scatter, with weights adaptively computed from the data. Its breakdown point and asymptotic behavior under elliptical distributions are established. This adaptive estimator is able to attain simultaneously the maximum possible