Semiparametric instrumental variable methods for causal response models
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Economics, c1999. === Includes bibliographical references. === This dissertation proposes new instrumental variable methods to identify, estimate and test for causal effects of endogenous treatments. These new methods are distinguished...
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Language: | English |
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Massachusetts Institute of Technology
2007
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Online Access: | http://hdl.handle.net/1721.1/38857 |
Summary: | Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Economics, c1999. === Includes bibliographical references. === This dissertation proposes new instrumental variable methods to identify, estimate and test for causal effects of endogenous treatments. These new methods are distinguished by the combination of nonparametric identifying assumptions and semiparametric estimators that provide a parsimoniuous summary of the results. The thesis consists of three essays presented in the form of chapters. The first chapter shows how to estimate linear and nonlinear causal response functions with covariates under weak (instrumental variable) identification restrictions. The second chapter (co-authored with Joshua Angrist and Guido Imbens) applies the identification results of the first chapter to estimate quantile causal response functions, so we can study the effect of the treatment on different parts of the distribution of the outcome variable. The third chapter of this dissertation looks again at distributional effects but focusing directly on the cumulative distribution functions of the potential outcomes with and without the treatment. === by Alberto Abadie. === Ph.D. |
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