Second order asymptotics in nonlinear regression |
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Authors: | Wolfgang H. Schmidt S. Zwanzig |
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Affiliation: | Humboldt-Universität, Berlin, DDR-1086 German Democratic Republic;Institut für Mathematik, ADW der DDR, Berlin, DDR-1086 German Democratic Republic |
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Abstract: | It is a well known part of statistical knowledge that first order asymptotically efficient procedures can be misleading for moderate sample sizes. Usually this is demonstrated for some popular special cases including numerical comparisons. Typically the situation is worse if nuisance parameters are present. In this paper we give second order asymptotically efficient tests, confidence regions, and estimators for the nonlinear regression model which are based on the least-squares estimator and the residual sum of squares. |
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Keywords: | Nonlinear regression Edgeworth expansion second order asymptotics hypothesis testing median unbiased estimators confidence regions |
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