The method of maximum likelihood is widely used in epidemiology, yet many epidemiologists receive little or no education in the conceptual underpinnings of the approach. Here we provide a primer on maximum likelihood and some important extensions which have proven useful in epidemiologic research, and which reveal connections between maximum likelihood and Bayesian methods. For a given data set and probability model, maximum likelihood finds values of the model parameters that give the observed data the highest probability. As with all inferential statistical methods, maximum likelihood is based on an assumed model and cannot account for bias sources that are not controlled by the model or the study design. Maximum likelihood is nonetheless...
When estimating the average effect of a binary treatment (or exposure) on an outcome, methods that i...
In this thesis we will describe the maximum likelihood method, method of estima- ting unknown parame...
In statistical theory and practice, a certain distribution is usually assumed and then optimal solut...
The method of maximum likelihood is widely used in epidemiology, yet many epidemiologists receive li...
This thesis is the comprehensive study of the method of maximum likelihood and its relative merit ov...
Markov Chain Monte Carlo (MCMC) methods are increasingly popular among epidemiologists. The reason f...
Maximum likelihood Estimation is an important aspect of frequentist approach which was introduced by...
Maximum likelihood is by far the most pop-ular general method of estimation. Its wide-spread accepta...
Parameter estimation and model fitting underlie many statistical procedures. Whether the objective i...
This richly illustrated textbook covers modern statistical methods with applications in medicine, ep...
Researchers of uncommon diseases are often interested in assessing potential risk factors. Given the...
This chapter discusses an alternative, more general approach based on maximizing the likelihood of t...
Background: Targeted maximum likelihood estimation has been proposed for estimating marginal causal ...
This is a compilation of current and past work on targeted maximum likelihood estimation. It featur...
This book takes a fresh look at the popular and well-established method of maximum likelihood for st...
When estimating the average effect of a binary treatment (or exposure) on an outcome, methods that i...
In this thesis we will describe the maximum likelihood method, method of estima- ting unknown parame...
In statistical theory and practice, a certain distribution is usually assumed and then optimal solut...
The method of maximum likelihood is widely used in epidemiology, yet many epidemiologists receive li...
This thesis is the comprehensive study of the method of maximum likelihood and its relative merit ov...
Markov Chain Monte Carlo (MCMC) methods are increasingly popular among epidemiologists. The reason f...
Maximum likelihood Estimation is an important aspect of frequentist approach which was introduced by...
Maximum likelihood is by far the most pop-ular general method of estimation. Its wide-spread accepta...
Parameter estimation and model fitting underlie many statistical procedures. Whether the objective i...
This richly illustrated textbook covers modern statistical methods with applications in medicine, ep...
Researchers of uncommon diseases are often interested in assessing potential risk factors. Given the...
This chapter discusses an alternative, more general approach based on maximizing the likelihood of t...
Background: Targeted maximum likelihood estimation has been proposed for estimating marginal causal ...
This is a compilation of current and past work on targeted maximum likelihood estimation. It featur...
This book takes a fresh look at the popular and well-established method of maximum likelihood for st...
When estimating the average effect of a binary treatment (or exposure) on an outcome, methods that i...
In this thesis we will describe the maximum likelihood method, method of estima- ting unknown parame...
In statistical theory and practice, a certain distribution is usually assumed and then optimal solut...