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  • 1
    UID:
    b3kat_BV023590890
    Format: 37, [15] S. , graph. Darst.
    Series Statement: National Bureau of Economic Research 〈Cambridge, Mass.〉: NBER working paper series 10428
    Additional Edition: Erscheint auch als Online-Ausgabe
    Language: English
    URL: Volltext  (kostenfrei)
    Author information: Fernández-Val, Iván
    Author information: Angrist, Joshua D. 1960-
    Library Location Call Number Volume/Issue/Year Availability
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  • 2
    UID:
    almafu_9958103778902883
    Format: 1 online resource: , illustrations (black and white);
    Series Statement: NBER working paper series no. w16997
    Content: In this paper, we develop a new censored quantile instrumental variable (CQIV) estimator and describe its properties and computation. The CQIV estimator combines Powell (1986) censored quantile regression (CQR) to deal semiparametrically with censoring, with a control variable approach to incorporate endogenous regressors. The CQIV estimator is obtained in two stages that are nonadditive in the unobservables. The first stage estimates a nonadditive model with infinite dimensional parameters for the control variable, such as a quantile or distribution regression model. The second stage estimates a nonadditive censored quantile regression model for the response variable of interest, including the estimated control variable to deal with endogeneity. For computation, we extend the algorithm for CQR developed by Chernozhukov and Hong (2002) to incorporate the estimation of the control variable. We give generic regularity conditions for asymptotic normality of the CQIV estimator and for the validity of resampling methods to approximate its asymptotic distribution. We verify these conditions for quantile and distribution regression estimation of the control variable. We illustrate the computation and applicability of the CQIV estimator with numerical examples and an empirical application on estimation of Engel curves for alcohol.
    Note: April 2011.
    Language: English
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  • 3
    UID:
    almafu_9958105799002883
    Format: 1 online resource: , illustrations (black and white);
    Series Statement: NBER working paper series no. w16566
    Content: This paper develops a covariate-based approach to the external validity of instrumental variables (IV) estimates. Assuming that differences in observed complier characteristics are what make IV estimates differ from one another and from parameters like the effect of treatment on the treated, we show how to construct estimates for new subpopulations from a given set of covariate-specific LATEs. We also develop a reweighting procedure that uses the traditional overidentification test statistic to define a population for which a given pair of IV estimates has external validity. These ideas are illustrated through a comparison of twins and sex-composition IV estimates of the effects childbearing on labor supply.
    Note: December 2010.
    Language: English
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  • 4
    UID:
    almafu_9958060254402883
    Format: 1 online resource: , illustrations (black and white);
    Series Statement: NBER working paper series no. w10428
    Content: Quantile regression(QR) fits a linear model for conditional quantiles, just as ordinary least squares (OLS) fits a linear model for conditional means. An attractive feature of OLS is that it gives the minimum mean square error linear approximation to the conditional expectation function even when the linear model is misspecified. Empirical research using quantile regression with discrete covariates suggests that QR may have a similar property, but the exact nature of the linear approximation has remained elusive. In this paper, we show that QR can be interpreted as minimizing a weighted mean-squared error loss function for specification error. The weighting function is an average density of the dependent variable near the true conditional quantile. The weighted least squares interpretation of QR is used to derive an omitted variables bias formula and a partial quantile correlation concept, similar to the relationship between partial correlation and OLS. We also derive general asymptotic results for QR processes allowing for misspecification of the conditional quantile function, extending earlier results from a single quantile to the entire process. The approximation properties of QR are illustrated through an analysis of the wage structure and residual inequality in US Census data for 1980, 1990, and 2000. The results suggest continued residual inequality growth in the 1990s, primarily in the upper half of the wage distribution and for college graduates.
    Note: April 2004.
    Language: English
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