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arxiv: 1004.5418 · v2 · pith:36JQFH2Enew · submitted 2010-04-29 · 🧮 math.ST · stat.TH

Robust location estimation with missing data

classification 🧮 math.ST stat.TH
keywords locationrobustdistributionestimatesfunctionalmissingconsistentcontinuous
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In a missing-data setting, we have a sample in which a vector of explanatory variables x_i is observed for every subject i, while scalar outcomes y_i are missing by happenstance on some individuals. In this work we propose robust estimates of the distribution of the responses assuming missing at random (MAR) data, under a semiparametric regression model. Our approach allows the consistent estimation of any weakly continuous functional of the response's distribution. In particular, strongly consistent estimates of any continuous location functional, such as the median or MM functionals, are proposed. A robust fit for the regression model combined with the robust properties of the location functional gives rise to a robust recipe for estimating the location parameter. Robustness is quantified through the breakdown point of the proposed procedure. The asymptotic distribution of the location estimates is also derived.

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