Bias Reduction Via Resampling for Estimation Following Sequential Tests

It is well known that maximum likelihood (ML) estimation results in biased estimates when estimating parameters following a sequential test. Existing bias correction methods rely on explicit calculations of the bias that are often difficult to derive. We suggest a simple alternative to the existing...

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Main Authors: Wang, Y. G., Leung, Denis H. Y.
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Language:English
Published: Institutional Knowledge at Singapore Management University 1997
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Online Access:https://ink.library.smu.edu.sg/soe_research/365
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spelling sg-smu-ink.soe_research-13642010-09-23T05:48:03Z Bias Reduction Via Resampling for Estimation Following Sequential Tests Wang, Y. G. Leung, Denis H. Y. It is well known that maximum likelihood (ML) estimation results in biased estimates when estimating parameters following a sequential test. Existing bias correction methods rely on explicit calculations of the bias that are often difficult to derive. We suggest a simple alternative to the existing methods. The new approach relies on approximating the bias of the estimate using a bootstrap method. It requires bootstrapping the sequential testing process by resampling observations from a distribution based on the ML estimate. Each bootstrap process will give a new ML estimate, and the corresponding bootstrap mean can be used to calibrate the estimate. An advantage of the new method over the existing methods is that the same procedure can be used under different stopping rules and different study designs. Simulation results suggest that this method performs competitively with existing methods. 1997-01-01T08:00:00Z text https://ink.library.smu.edu.sg/soe_research/365 info:doi/10.1080/07474949708836386 Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Economics
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Economics
spellingShingle Economics
Wang, Y. G.
Leung, Denis H. Y.
Bias Reduction Via Resampling for Estimation Following Sequential Tests
description It is well known that maximum likelihood (ML) estimation results in biased estimates when estimating parameters following a sequential test. Existing bias correction methods rely on explicit calculations of the bias that are often difficult to derive. We suggest a simple alternative to the existing methods. The new approach relies on approximating the bias of the estimate using a bootstrap method. It requires bootstrapping the sequential testing process by resampling observations from a distribution based on the ML estimate. Each bootstrap process will give a new ML estimate, and the corresponding bootstrap mean can be used to calibrate the estimate. An advantage of the new method over the existing methods is that the same procedure can be used under different stopping rules and different study designs. Simulation results suggest that this method performs competitively with existing methods.
format text
author Wang, Y. G.
Leung, Denis H. Y.
author_facet Wang, Y. G.
Leung, Denis H. Y.
author_sort Wang, Y. G.
title Bias Reduction Via Resampling for Estimation Following Sequential Tests
title_short Bias Reduction Via Resampling for Estimation Following Sequential Tests
title_full Bias Reduction Via Resampling for Estimation Following Sequential Tests
title_fullStr Bias Reduction Via Resampling for Estimation Following Sequential Tests
title_full_unstemmed Bias Reduction Via Resampling for Estimation Following Sequential Tests
title_sort bias reduction via resampling for estimation following sequential tests
publisher Institutional Knowledge at Singapore Management University
publishDate 1997
url https://ink.library.smu.edu.sg/soe_research/365
_version_ 1770569135128838144