Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters
We study the gradient wild bootstrap-based inference for instrumental variable quantile regressions in the framework of a small number of large clusters in which the number of clusters is viewed as fixed, and the number of observations for each cluster diverges to infinity. For the Wald inference, w...
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sg-smu-ink.soe_research-37872025-01-09T09:20:58Z Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters WANG, Wenjie ZHANG, Yichong We study the gradient wild bootstrap-based inference for instrumental variable quantile regressions in the framework of a small number of large clusters in which the number of clusters is viewed as fixed, and the number of observations for each cluster diverges to infinity. For the Wald inference, we show that our wild bootstrap Wald test, with or without studentization using the cluster-robust covariance estimator (CRVE), controls size asymptotically up to a small error as long as the parameter of endogenous variable is strongly identified in at least one of the clusters. We further show that the wild bootstrap Wald test with CRVE studentization is more powerful for distant local alternatives than that without. Last, we develop a wild bootstrap Anderson-Rubin (AR) test for the weak-identification-robust inference. We show it controls size asymptotically up to a small error, even under weak or partial identification for all clusters. We illustrate the good finite-sample performance of the new inference methods using simulations and provide an empirical application to a well-known dataset about US local labor markets. 2024-08-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/2788 https://ink.library.smu.edu.sg/context/soe_research/article/3787/viewcontent/2408.10686v1.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Gradient wild bootstrap Weak instruments Clustered data Randomization test Instrumental variable quantile regression Econometrics Multivariate Analysis Numerical Analysis and Scientific Computing |
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Gradient wild bootstrap Weak instruments Clustered data Randomization test Instrumental variable quantile regression Econometrics Multivariate Analysis Numerical Analysis and Scientific Computing WANG, Wenjie ZHANG, Yichong Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters |
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We study the gradient wild bootstrap-based inference for instrumental variable quantile regressions in the framework of a small number of large clusters in which the number of clusters is viewed as fixed, and the number of observations for each cluster diverges to infinity. For the Wald inference, we show that our wild bootstrap Wald test, with or without studentization using the cluster-robust covariance estimator (CRVE), controls size asymptotically up to a small error as long as the parameter of endogenous variable is strongly identified in at least one of the clusters. We further show that the wild bootstrap Wald test with CRVE studentization is more powerful for distant local alternatives than that without. Last, we develop a wild bootstrap Anderson-Rubin (AR) test for the weak-identification-robust inference. We show it controls size asymptotically up to a small error, even under weak or partial identification for all clusters. We illustrate the good finite-sample performance of the new inference methods using simulations and provide an empirical application to a well-known dataset about US local labor markets. |
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WANG, Wenjie ZHANG, Yichong |
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WANG, Wenjie ZHANG, Yichong |
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WANG, Wenjie |
title |
Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters |
title_short |
Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters |
title_full |
Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters |
title_fullStr |
Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters |
title_full_unstemmed |
Gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters |
title_sort |
gradient wild bootstrap for instrumental variable quantile regressions with weak and few clusters |
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Institutional Knowledge at Singapore Management University |
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2024 |
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https://ink.library.smu.edu.sg/soe_research/2788 https://ink.library.smu.edu.sg/context/soe_research/article/3787/viewcontent/2408.10686v1.pdf |
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