Relative risks (RRs) are generally considered preferable to odds ratios in prospective studies. However, unlike logistic regression for odds ratios, the standard log-binomial model for RR regression does not respect the natural parameter constraints and is therefore often subject to numerical instability. In this paper, we develop a reliable and flexible method for fitting log-binomial models. We use an Expectation-Maximization (EM) algorithm where the multiplicative event probability is viewed as the joint probability for a collection of latent binary outcomes. This gives a simple iterative scheme that provides stable convergence to the maximum likelihood estimate. In addition to reliability, the method offers some flexible generalizations...
<p>A common problem in formulating models for the relative risk and risk difference is the variation...
The extensive use of logistic regression models in analytical epidemiology as well as in randomized ...
Fitting a log binomial model to binary outcome data makes it possible to estimate risk and relative ...
Relative risks are often considered preferable to odds ratios for quantifying the association betwee...
Abstract: Problem statement: Relative risk has concrete meanings of comparing two groups and measuri...
The relative risk has been widely reported as a ratio measure of association between covariates for ...
The relative risk or prevalence ratio is a natural and familiar summary of association between a bin...
Relative risk regression using a log-link binomial generalized linear model (GLM) is an important to...
Thesis by publication.Bibliography: pages 251-266.1. Introduction -- 2. Background -- 3. Additive bi...
An estimate of the risk or prevalence ratio, adjusted for confounders, can be obtained from a log b...
: In medical statistics, when the effect of a binary risk factor on a binary response is of interest...
Background: Disadvantages have already been pointed out on the use of odds ratio (OR) as a measure o...
Thesis (Ph.D.)--University of Washington, 2020Generalized linear models, such as logistic regression...
Relative risks have become a popular measure of treatment effect for binary outcomes in randomized c...
A binary health outcome may be regressed on covariates using a log link, rather than more typical li...
<p>A common problem in formulating models for the relative risk and risk difference is the variation...
The extensive use of logistic regression models in analytical epidemiology as well as in randomized ...
Fitting a log binomial model to binary outcome data makes it possible to estimate risk and relative ...
Relative risks are often considered preferable to odds ratios for quantifying the association betwee...
Abstract: Problem statement: Relative risk has concrete meanings of comparing two groups and measuri...
The relative risk has been widely reported as a ratio measure of association between covariates for ...
The relative risk or prevalence ratio is a natural and familiar summary of association between a bin...
Relative risk regression using a log-link binomial generalized linear model (GLM) is an important to...
Thesis by publication.Bibliography: pages 251-266.1. Introduction -- 2. Background -- 3. Additive bi...
An estimate of the risk or prevalence ratio, adjusted for confounders, can be obtained from a log b...
: In medical statistics, when the effect of a binary risk factor on a binary response is of interest...
Background: Disadvantages have already been pointed out on the use of odds ratio (OR) as a measure o...
Thesis (Ph.D.)--University of Washington, 2020Generalized linear models, such as logistic regression...
Relative risks have become a popular measure of treatment effect for binary outcomes in randomized c...
A binary health outcome may be regressed on covariates using a log link, rather than more typical li...
<p>A common problem in formulating models for the relative risk and risk difference is the variation...
The extensive use of logistic regression models in analytical epidemiology as well as in randomized ...
Fitting a log binomial model to binary outcome data makes it possible to estimate risk and relative ...