Bounds on generalized linear predictors with incomplete outcome data (Q877249)

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scientific article; zbMATH DE number 5145086
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Bounds on generalized linear predictors with incomplete outcome data
scientific article; zbMATH DE number 5145086

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    Bounds on generalized linear predictors with incomplete outcome data (English)
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    19 April 2007
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    The generalized linear predictors for a response \(Y\) are considered of the form \(\widehat Y=G(X\vartheta)\), where \(X\) is the explanatory variables vector, \(G\) is some pre-assigned strictly increasing function, \(\vartheta\) is a vector of coefficients (to be determined). The best \(\vartheta\) (for the quadratic loss function) is \(\vartheta=(\mathbf{E}X'X)^{-1}\text\textbf{E}X'G^{-1}(X)\). The paper is devoted to the bounds for \(c'\vartheta\) (\(c\) being a fixed vector) in the case when lower and upper bounds \(\overline F\) and \(\underline{F}\) for the conditional CDF \(F_{Y| X}(y,x)\) are known, i.e., \(\underline{F}(y,x)\leq F_{Y| X}(y,x)\leq \overline F(y,x)\) for all \(x\) and \(y\). The obtained bounds are used for estimation of \(\vartheta\) in the case of missing values of \(Y\) in the sample. A real data example is presented.
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    instrumental variable estimator
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    square loss
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    missing outcome data
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    numerical examples
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    generalized linear predictors
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