A number of small-sample corrections have been proposed for the conditional maximum-likelihood estimator of the odds ratio for matched pairs with a dichotomous exposure. I here contrast the rationale and performance of several corrections, specifically those that generalize easily to multiple condit
Maximum likelihood estimation for sample surveys
โ Scribed by R L Chambers
- Publisher
- CRC Press
- Year
- 2012
- Tongue
- English
- Leaves
- 374
- Series
- Monographs on statistics and applied probability, 125
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Table of Contents
Content: 1. Introduction --
2. Maximum likelihood theory for sample surveys --
3. Alternative likelihood-based methods for sample survey data --
4. Populations with independent units --
5. Regression models --
6. Clustered populations --
7. Informative nonresponse --
8. Maximum likelihood in other complicated situations.
โฆ Subjects
ะะฐัะตะผะฐัะธะบะฐ;ะขะตะพัะธั ะฒะตัะพััะฝะพััะตะน ะธ ะผะฐัะตะผะฐัะธัะตัะบะฐั ััะฐัะธััะธะบะฐ;ะะฐัะตะผะฐัะธัะตัะบะฐั ััะฐัะธััะธะบะฐ;
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