International audienceMatching and Difference in Difference (DID) are two widespread methods that use pre-treatment outcomes to correct for selection bias. I detail the sources of bias of both estimators in a model of earnings dynamics and entry into a Job Training Program (JTP) and I assess their performances using Monte Carlo simulations of the model calibrated with realistic parameter values. I find that Matching generally underestimates the average causal effect of the program and gets closer to the true effect when conditioning on an increasing number of pre-treatment outcomes. When selection bias is symmetric around the treatment date, DID is consistent when implemented symmetrically-i.e. comparing outcomes observed the same number of...
In this paper we consider a type of bias which stems from the mathematical algorithm often used to d...
<p>(A) The probability of choice as a function of fractional income. Each point corresponds to one s...
This paper has two goals. One is to examine the existing statistical techniques to correct for the s...
Matching and Difference in Difference (DID) are two widespread methods that use pre-treatment outcom...
Matching and Difference in Difference (DID) are two widespread methods that use pre-treatment outcom...
This paper compares matching and Difference-In-Difference matching (DID) when estimating the effect...
This paper explores the implications of bias cancellation on the estimate of average treatment effec...
Applied researchers often combine Difference In Differences (DID) with conditioning on pre-treatment...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]DTAMInternational audienceIn this paper, I examine wheth...
The Difference in Difference (DiD) estimator is a popular estimator built on the "parallel trends" a...
This article examines match bias arising from earnings imputation. Wage equation parameters are esti...
We compare various matching estimators to the results of two randomized field experiments that evalu...
The matching method for treatment evaluation does not balance selective unobserved differences betwe...
This paper evaluates the effects of Public Sponsored Training in East Germany in the context of reit...
Based on new, exceptionally informative and large German linked employer-employee administrative dat...
In this paper we consider a type of bias which stems from the mathematical algorithm often used to d...
<p>(A) The probability of choice as a function of fractional income. Each point corresponds to one s...
This paper has two goals. One is to examine the existing statistical techniques to correct for the s...
Matching and Difference in Difference (DID) are two widespread methods that use pre-treatment outcom...
Matching and Difference in Difference (DID) are two widespread methods that use pre-treatment outcom...
This paper compares matching and Difference-In-Difference matching (DID) when estimating the effect...
This paper explores the implications of bias cancellation on the estimate of average treatment effec...
Applied researchers often combine Difference In Differences (DID) with conditioning on pre-treatment...
[Departement_IRSTEA]Territoires [TR1_IRSTEA]DTAMInternational audienceIn this paper, I examine wheth...
The Difference in Difference (DiD) estimator is a popular estimator built on the "parallel trends" a...
This article examines match bias arising from earnings imputation. Wage equation parameters are esti...
We compare various matching estimators to the results of two randomized field experiments that evalu...
The matching method for treatment evaluation does not balance selective unobserved differences betwe...
This paper evaluates the effects of Public Sponsored Training in East Germany in the context of reit...
Based on new, exceptionally informative and large German linked employer-employee administrative dat...
In this paper we consider a type of bias which stems from the mathematical algorithm often used to d...
<p>(A) The probability of choice as a function of fractional income. Each point corresponds to one s...
This paper has two goals. One is to examine the existing statistical techniques to correct for the s...