Empirical likelihood inference and goodness-of-fit test for logistic regression model under two-phase case-control sampling
Due to cost-effectiveness and high efficiency, two-phase case-control sampling has been widely used in epidemiology studies. We develop a semi-parametric empirical likelihood approach to two-phase case-control data under the logistic regression model. We show that the maximum empirical likelihood es...
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Published in | Statistical theory and related fields Vol. 6; no. 4; pp. 265 - 276 |
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Main Authors | , , |
Format | Journal Article |
Language | English |
Published |
Taylor & Francis
25.11.2022
Taylor & Francis Group |
Subjects | |
Online Access | Get full text |
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Summary: | Due to cost-effectiveness and high efficiency, two-phase case-control sampling has been widely used in epidemiology studies. We develop a semi-parametric empirical likelihood approach to two-phase case-control data under the logistic regression model. We show that the maximum empirical likelihood estimator has an asymptotically normal distribution, and the empirical likelihood ratio follows an asymptotically central chi-square distribution. We find that the maximum empirical likelihood estimator is equal to Breslow and Holubkov (1997)'s maximum likelihood estimator. Even so, the limiting distribution of the likelihood ratio, likelihood-ratio-based interval, and test are all new. Furthermore, we construct new Kolmogorov-Smirnov type goodness-of-fit tests to test the validation of the underlying logistic regression model. Our simulation results and a real application show that the likelihood-ratio-based interval and test have certain merits over the Wald-type counterparts and that the proposed goodness-of-fit test is valid. |
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ISSN: | 2475-4269 2475-4277 |
DOI: | 10.1080/24754269.2021.1946373 |