Empirical distributions in selection bias models (Q1066588)
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scientific article; zbMATH DE number 3926003
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Empirical distributions in selection bias models |
scientific article; zbMATH DE number 3926003 |
Statements
Empirical distributions in selection bias models (English)
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1985
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Assume that in each of s samples, random variables \(y_{i1},...,y_{in_ i}\), \(1\leq i\leq s\), are generated from some unknown distribution function (d.f.) F, according to known sampling rules \(w_ i\), \(1\leq i\leq s\), i.e. in the i-th sample, the y's have \(F_ i(t)=W_ i^{-1}(F)\int^{t}_{-\infty}w_ i(u)dF(u)\) as their common d.f. Here \(W_ i(F)=\int^{\infty}_{-\infty}w_ i(u)dF(u)\) serves as a norming constant. The author considers nonparametric maximum likelihood estimation of F, and derives a necessary and sufficient condition for the existence and uniqueness of the estimator \(\hat F.\) Also sufficiency of \(\hat F\) is proved.
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empirical distributions
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sample selection bias
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weighted
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distributions
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nonparametric maximum likelihood estimation
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sufficiency
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