In this paper we consider the problem of estimating causal effects in a framework with many treatments through a simulation study. We engage in Monte Carlo simulations to evaluate the performance of inverse probability of treatment weighting (IPTW) with 10 treatments, estimating the propensity scores using Generalized Boosted Models. We assess the performance of IPTW under three different scenarios representing treatment allocations, and compare it with a simple parametric approach, i.e. logistic regression. IPTW’s estimates are less biased, even though they exhibit a higher variance than those based on logistic regression. Moreover, we apply IPTW to the estimation of the neighbourhood effect on the probability of older people ex...
Doubly-robust estimators have been used extensively for estimating the treatment effect, for their p...
Nearest Neighbour (NN) propensity score (PS) matching methods are commonly used in pharmacoepidemio...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
In this paper we consider the problem of estimating causal effects in a framework with many treatme...
Neighbourhood effects have been defined by Oakes (2004) as the independent causal effects of neighbo...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
In this article we develop the theoretical properties of the propensity function, which is a general...
In this article we develop the theoretical properties of the propensity function, which is a general...
Propensity score has been increasingly used to control for confounding in observational studies. The...
Abstract Background Estimating statistical power is a...
International audienceFor estimating the causal effect of treatment exposure on the occurrence of ad...
In this article we introduce the concept of inverse probability of treatment weighting (IPTW) and de...
In this dissertation, we develop improved estimation of average treatment effect on the treatment (A...
Propensity score (PS) and disease risk score (DRS) are often used in pharmacoepidemiologic safety st...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
Doubly-robust estimators have been used extensively for estimating the treatment effect, for their p...
Nearest Neighbour (NN) propensity score (PS) matching methods are commonly used in pharmacoepidemio...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...
In this paper we consider the problem of estimating causal effects in a framework with many treatme...
Neighbourhood effects have been defined by Oakes (2004) as the independent causal effects of neighbo...
In this article, we study the causal inference problem with a continuous treatment variable using pr...
In this article we develop the theoretical properties of the propensity function, which is a general...
In this article we develop the theoretical properties of the propensity function, which is a general...
Propensity score has been increasingly used to control for confounding in observational studies. The...
Abstract Background Estimating statistical power is a...
International audienceFor estimating the causal effect of treatment exposure on the occurrence of ad...
In this article we introduce the concept of inverse probability of treatment weighting (IPTW) and de...
In this dissertation, we develop improved estimation of average treatment effect on the treatment (A...
Propensity score (PS) and disease risk score (DRS) are often used in pharmacoepidemiologic safety st...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
Doubly-robust estimators have been used extensively for estimating the treatment effect, for their p...
Nearest Neighbour (NN) propensity score (PS) matching methods are commonly used in pharmacoepidemio...
Propensity score matching and inverse-probability weighting are popular methods for causal inference...