Nonparametric Estimation IV
نویسندگان
چکیده
منابع مشابه
Semi-nonparametric Iv Estimation of Shape-invariant Engel Curves By
1 This paper studies a shape-invariant Engel curve system with endogenous total expenditure , in which the shape-invariant specification involves a common shift parameter for each demographic group in a pooled system of nonparametric Engel curves. We focus on the identification and estimation of both the nonparametric shapes of the En-gel curves and the parametric specification of the demograph...
متن کاملSemi-nonparametric Iv Estimation of Shape-invariant Engel
This paper studies a shape-invariant Engel curve system with endogenous total expenditure, in which the shape-invariant speci cation involves a common shift parameter for each demographic group in a pooled system of nonparametric Engel curves. We focus on the identi cation and estimation of both the nonparametric shapes of the Engel curves and the parametric speci cation of the demographic scal...
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This paper concerns the identification and estimation of a shape-invariant Engel curve system with endogenous total expenditure. The shape-invariant specification involves a common shift parameter for each demographic group in a pooled system of Engel curves. Our focus is on the identification and estimation of both the nonparametric shape of the Engel curve and the parametric specification of ...
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ژورنال
عنوان ژورنال: The Annals of Mathematical Statistics
سال: 1951
ISSN: 0003-4851
DOI: 10.1214/aoms/1177729650