We consider misclassified binary data with a validation substudy. For such data various methods have been developed for estimating the odds ratio. It is well-known that the maximum likelihood estimator (MLE) of the odds ratio is efficient but requires iterative algorithms to compute. In this article, we derive a closed-form formula for the MLE and its asymptotic standard error. We compute the closed-form MLE on a data set that has been analyzed by other methods, and the results are compared. © 2011 - IOS Press and the authors. All rights reserved
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
Purpose: Misclassification of a binary outcome can introduce bias in estimation of the odds-ratio as...
Relative risks are often considered preferable to odds ratios for quantifying the association betwee...
We consider misclassified binary data with a validation substudy. For such data various methods have...
In the estimation of the odds ratio (OR), the conditional maximum-likelihood estimate (cMLE) is pre-...
<div><p>A flexible semiparametric odds ratio model has been proposed to unify and to extend both the...
In presence of completely or quasi-completely separated data, the maximum likelihood estimates for t...
We introduce the new estimator of odds ratios in rare events using Empirical Bayes method in two ind...
In this article we derive likelihood-based confidence intervals for the risk ratio using over-report...
The properties of four commonly used estimators of the odds ratio are studied under a large-sample s...
We propose a sequential method to construct approximate confidence limits for the ratio of two indep...
Copyright © 2013 Bijan Nouri et al. This is an open access article distributed under the Creative Co...
This paper presents strategies for the estimation and testing of binomial and multinomial parameters...
The proportional odds model is commonly used in regression analysis to predict the outcome for an or...
Includes bibliographical references (p. ).We consider the problem of point and interval estimation f...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
Purpose: Misclassification of a binary outcome can introduce bias in estimation of the odds-ratio as...
Relative risks are often considered preferable to odds ratios for quantifying the association betwee...
We consider misclassified binary data with a validation substudy. For such data various methods have...
In the estimation of the odds ratio (OR), the conditional maximum-likelihood estimate (cMLE) is pre-...
<div><p>A flexible semiparametric odds ratio model has been proposed to unify and to extend both the...
In presence of completely or quasi-completely separated data, the maximum likelihood estimates for t...
We introduce the new estimator of odds ratios in rare events using Empirical Bayes method in two ind...
In this article we derive likelihood-based confidence intervals for the risk ratio using over-report...
The properties of four commonly used estimators of the odds ratio are studied under a large-sample s...
We propose a sequential method to construct approximate confidence limits for the ratio of two indep...
Copyright © 2013 Bijan Nouri et al. This is an open access article distributed under the Creative Co...
This paper presents strategies for the estimation and testing of binomial and multinomial parameters...
The proportional odds model is commonly used in regression analysis to predict the outcome for an or...
Includes bibliographical references (p. ).We consider the problem of point and interval estimation f...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
Purpose: Misclassification of a binary outcome can introduce bias in estimation of the odds-ratio as...
Relative risks are often considered preferable to odds ratios for quantifying the association betwee...