EFFICIENCY-CONSTRAINED BIAS-ROBUST ESTIMATION OF LOCATION

成果类型:
Article
署名作者:
MARTIN, RD; ZAMAR, RH
署名单位:
University of British Columbia
刊物名称:
ANNALS OF STATISTICS
ISSN/ISSBN:
0090-5364
DOI:
10.1214/aos/1176349029
发表日期:
1993
页码:
338-354
关键词:
regression
摘要:
In 1964, P. Huber established the following minimax bias robustness result for estimating the location mu in the E-contamination family F(x) = (1 - epsilon)PHI[(x - mu)/s] + epsilonH(x), where PHI is the standard normal distribution and H is an arbitrary distribution function: The median minimizes the maximum asymptotic bias among all translation equivariant estimates of location. However, the median efficiency of 2/pi at the Gaussian model may be unacceptably low in some applications. This motivates one to solve the following problem for the above e-contamination family: Among all location M-estimates, find the one which minimizes the maximum asymptotic bias subject to a constraint on efficiency at the Gaussian model. This problem is the dual form analog of Hampel's optimality problem of minimizing the asymptotic variance at the nominal model (e.g., the Gaussian model) subject to a bound on the gross-error sensitivity. We solve the global problem completely for the case of a known scale parameter. The main conclusion is that Hampel's heuristic is essentially correct: The resulting M-estimate is based on a psi function which is amazingly close, but not exactly equal, to the Huber/Hampel optimal psi. It turns out that one pays only a relatively small price in terms of increase in maximal bias for increasing efficiency from 64% to the range 90-95%. We also present a conjectured solution to the problem, based on heuristic arguments and numerical calculations, when the nuisance scale parameter is unknown.
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