Using a correlated probit model approximation to estimate the variance for binary matched pairs
Waddington, D. and Thompson, Robin
(2004)
Using a correlated probit model approximation to estimate the variance for binary matched pairs.
Statistics and Computing, 14 (2).
pp. 83-90.
10.1023/B:STCO.0000021406.25797.98
A correlated probit model approximation for conditional probabilities (Mendell and Elston 1974) is used to estimate the variance for binary matched pairs data by maximum likelihood. Using asymptotic data, the bias of the estimates is shown to be small for a wide range of intra-class correlations and incidences. This approximation is also compared with other recently published, or implemented, improved approximations. For the small sample examples presented, it shows a substantial advantage over other approximations. The method is extended to allow covariates for each observation, and fitting by iteratively reweighted least squares.
| Item Type | Article |
|---|---|
| Open Access | Not Open Access |
| Additional information | Project finished 31/3/1999 |
| Keywords | asymptotic bias, binary data, correlated probit model approximation, matched pairs, maximum likelihood |
| Project | 445, 513, Statistical and stochastic modelling of complex biological processes with emphasis on spatial and temporal processes |
| Date Deposited | 05 Dec 2025 09:34 |
| Last Modified | 19 Dec 2025 14:27 |
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