textabstractIn this article we propose and implement an instrumental variable estimation procedure to obtain treatment effects on duration outcomes. The method can handle the typical complications that arise with duration data of time-varying treatment and censoring. The treatment effect we define is in terms of shifting the quantiles of the outcome distribution based on the Generalized Accelerated Failure Time (GAFT) model. The GAFT model encompasses two competing approaches to duration data; the (Mixed) Proportional Hazard (MPH) model and the Accelerated Failure Time (AFT) model. We discuss the large sample properties of the proposed Instrumental Variable Linear Rank (IVLR), and show how we can, with one additional step, improve...
Background: In many applications of instrumental variable (IV) methods, the treatments of interest a...
In randomized clinical trials, when the outcome of interest is time-to-event, Cox’s proportional haz...
In the analysis of longitudinal data, two semiparametric models that are often used are the Cox prop...
textabstractIn this article we focus on time-to-event studies with a randomised treatment assignment...
The articles contained in this PhD thesis give one of the first attempts to formalise Instrumental V...
We develop a nonparametric instrumental variable approach for the estimation of average treatment e...
[EMBARGOED UNTIL 6/1/2023] Variable selection has been discussed under many contexts and especially ...
The use of instrumental variables for estimating the effect of an exposure on an outcome is popular ...
This article discusses an instrumental variable approach for analyzing censored data that includes m...
We develop an instrumental variable approach for identification of dynamic treatment effects on surv...
This paper considers identification and estimation of the causal effect of the time Z until a subjec...
This paper analyzes the effect of a discrete treatment Z on a duration T. The treatment is not rand...
Background Randomized Controlled Trials almost invariably utilize the hazard ratio calculated with a...
Instrumental variable (IV) analysis is used to address unmeasured confounding when comparing two non...
We consider a method for extending instrumental variables methods in order to estimate the overall e...
Background: In many applications of instrumental variable (IV) methods, the treatments of interest a...
In randomized clinical trials, when the outcome of interest is time-to-event, Cox’s proportional haz...
In the analysis of longitudinal data, two semiparametric models that are often used are the Cox prop...
textabstractIn this article we focus on time-to-event studies with a randomised treatment assignment...
The articles contained in this PhD thesis give one of the first attempts to formalise Instrumental V...
We develop a nonparametric instrumental variable approach for the estimation of average treatment e...
[EMBARGOED UNTIL 6/1/2023] Variable selection has been discussed under many contexts and especially ...
The use of instrumental variables for estimating the effect of an exposure on an outcome is popular ...
This article discusses an instrumental variable approach for analyzing censored data that includes m...
We develop an instrumental variable approach for identification of dynamic treatment effects on surv...
This paper considers identification and estimation of the causal effect of the time Z until a subjec...
This paper analyzes the effect of a discrete treatment Z on a duration T. The treatment is not rand...
Background Randomized Controlled Trials almost invariably utilize the hazard ratio calculated with a...
Instrumental variable (IV) analysis is used to address unmeasured confounding when comparing two non...
We consider a method for extending instrumental variables methods in order to estimate the overall e...
Background: In many applications of instrumental variable (IV) methods, the treatments of interest a...
In randomized clinical trials, when the outcome of interest is time-to-event, Cox’s proportional haz...
In the analysis of longitudinal data, two semiparametric models that are often used are the Cox prop...