A conditional linear combination test with many weak instruments
We consider a linear combination of jackknife Anderson-Rubin (AR), jackknife Lagrangian multiplier (LM), and orthogonalized jackknife LM tests for inference in IV regressions with many weak instruments and heteroskedasticity. Following I.Andrews (2016), we choose the weights in the linear combinatio...
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sg-ntu-dr.10356-1733162024-01-24T01:51:29Z A conditional linear combination test with many weak instruments Lim, Dennis Wang, Wenjie Zhang, Yichong School of Social Sciences Social sciences::Economic theory Many Instruments Weak Identification We consider a linear combination of jackknife Anderson-Rubin (AR), jackknife Lagrangian multiplier (LM), and orthogonalized jackknife LM tests for inference in IV regressions with many weak instruments and heteroskedasticity. Following I.Andrews (2016), we choose the weights in the linear combination based on a decision-theoretic rule that is adaptive to the identification strength. Under both weak and strong identifications, the proposed test controls asymptotic size and is admissible among certain class of tests. Under strong identification, our linear combination test has optimal power against local alternatives among the class of invariant or unbiased tests which are constructed based on jackknife AR and LM tests. Simulations and an empirical application to Angrist and Krueger's (1991) dataset confirm the good power properties of our test. Ministry of Education (MOE) Wenjie Wang acknowledges the financial support from Singapore Ministry of Education Tier 1 grants RG53/20 and RG104/21. Yichong Zhang acknowledges the financial support from a Lee Kong Chian fellowship, Singapore and the NSFC, China under the grant No. 72133002. 2024-01-24T01:51:29Z 2024-01-24T01:51:29Z 2024 Journal Article Lim, D., Wang, W. & Zhang, Y. (2024). A conditional linear combination test with many weak instruments. Journal of Econometrics, 238(2), 105602-. https://dx.doi.org/10.1016/j.jeconom.2023.105602 0304-4076 https://hdl.handle.net/10356/173316 10.1016/j.jeconom.2023.105602 2-s2.0-85175652451 2 238 105602 en RG53/20 RG104/21 Journal of Econometrics © 2023 Elsevier B.V. All rights reserved. |
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Social sciences::Economic theory Many Instruments Weak Identification Lim, Dennis Wang, Wenjie Zhang, Yichong A conditional linear combination test with many weak instruments |
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We consider a linear combination of jackknife Anderson-Rubin (AR), jackknife Lagrangian multiplier (LM), and orthogonalized jackknife LM tests for inference in IV regressions with many weak instruments and heteroskedasticity. Following I.Andrews (2016), we choose the weights in the linear combination based on a decision-theoretic rule that is adaptive to the identification strength. Under both weak and strong identifications, the proposed test controls asymptotic size and is admissible among certain class of tests. Under strong identification, our linear combination test has optimal power against local alternatives among the class of invariant or unbiased tests which are constructed based on jackknife AR and LM tests. Simulations and an empirical application to Angrist and Krueger's (1991) dataset confirm the good power properties of our test. |
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School of Social Sciences |
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School of Social Sciences Lim, Dennis Wang, Wenjie Zhang, Yichong |
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Article |
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Lim, Dennis Wang, Wenjie Zhang, Yichong |
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Lim, Dennis |
title |
A conditional linear combination test with many weak instruments |
title_short |
A conditional linear combination test with many weak instruments |
title_full |
A conditional linear combination test with many weak instruments |
title_fullStr |
A conditional linear combination test with many weak instruments |
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A conditional linear combination test with many weak instruments |
title_sort |
conditional linear combination test with many weak instruments |
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2024 |
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https://hdl.handle.net/10356/173316 |
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1789483129523666944 |