Testing for monotonicity in unobservables under unconfoundedness
Monotonicity in a scalar unobservable is a common assumption when modeling heterogeneity in structural models. Among other things, it allows one to recover the underlying structural function from certain conditional quantiles of observables. Nevertheless, monotonicity is a strong assumption and in s...
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sg-smu-ink.soe_research-29082020-04-01T05:44:20Z Testing for monotonicity in unobservables under unconfoundedness HODERLEIN, Stefan SU, Liangjun WHITE, Halbert YANG, Thomas Tao Monotonicity in a scalar unobservable is a common assumption when modeling heterogeneity in structural models. Among other things, it allows one to recover the underlying structural function from certain conditional quantiles of observables. Nevertheless, monotonicity is a strong assumption and in some economic applications unlikely to hold, e.g., random coefficient models. Its failure can have substantive adverse consequences, in particular inconsistency of any estimator that is based on it. Having a test for this hypothesis is hence desirable. This paper provides such a test for cross-section data. We show how to exploit an exclusion restriction together With a conditional independence assumption, which in the binary treatment literature is commonly called unconfoundedness, to construct a test. Our statistic is asymptotically normal under local alternatives and consistent against global alternatives. Monte Carlo experiments show that a suitable bootstrap procedure yields tests with reasonable level behavior and useful power. We apply our test to study the role of unobserved ability in determining Black-White wage differences and to study whether Engel curves are monotonically driven by a scalar unobservable. 2016-07-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/1909 info:doi/10.1016/j.jeconom.2016.02.015 https://ink.library.smu.edu.sg/context/soe_research/article/2908/viewcontent/Testing_Monotonicity_Unobservables_Unconfoundedness_2016_pp.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Control variables Conditional exogeneity Endogenous variables Monotonicity Nonparametrics Nonseparable Specification test Unobserved heterogeneity Econometrics |
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Control variables Conditional exogeneity Endogenous variables Monotonicity Nonparametrics Nonseparable Specification test Unobserved heterogeneity Econometrics HODERLEIN, Stefan SU, Liangjun WHITE, Halbert YANG, Thomas Tao Testing for monotonicity in unobservables under unconfoundedness |
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Monotonicity in a scalar unobservable is a common assumption when modeling heterogeneity in structural models. Among other things, it allows one to recover the underlying structural function from certain conditional quantiles of observables. Nevertheless, monotonicity is a strong assumption and in some economic applications unlikely to hold, e.g., random coefficient models. Its failure can have substantive adverse consequences, in particular inconsistency of any estimator that is based on it. Having a test for this hypothesis is hence desirable. This paper provides such a test for cross-section data. We show how to exploit an exclusion restriction together With a conditional independence assumption, which in the binary treatment literature is commonly called unconfoundedness, to construct a test. Our statistic is asymptotically normal under local alternatives and consistent against global alternatives. Monte Carlo experiments show that a suitable bootstrap procedure yields tests with reasonable level behavior and useful power. We apply our test to study the role of unobserved ability in determining Black-White wage differences and to study whether Engel curves are monotonically driven by a scalar unobservable. |
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HODERLEIN, Stefan SU, Liangjun WHITE, Halbert YANG, Thomas Tao |
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HODERLEIN, Stefan SU, Liangjun WHITE, Halbert YANG, Thomas Tao |
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HODERLEIN, Stefan |
title |
Testing for monotonicity in unobservables under unconfoundedness |
title_short |
Testing for monotonicity in unobservables under unconfoundedness |
title_full |
Testing for monotonicity in unobservables under unconfoundedness |
title_fullStr |
Testing for monotonicity in unobservables under unconfoundedness |
title_full_unstemmed |
Testing for monotonicity in unobservables under unconfoundedness |
title_sort |
testing for monotonicity in unobservables under unconfoundedness |
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Institutional Knowledge at Singapore Management University |
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2016 |
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https://ink.library.smu.edu.sg/soe_research/1909 https://ink.library.smu.edu.sg/context/soe_research/article/2908/viewcontent/Testing_Monotonicity_Unobservables_Unconfoundedness_2016_pp.pdf |
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