none2noIn this paper we study the performance of the most popular bootstrap schemes for multilevel data. Also, we propose a modied version of the wild bootstrap procedure for hierarchical data structures. The wild bootstrap does not require homoscedasticity or assumptions on the distribution of the error processes. Hence, it is a valuable tool for robust inference in a multilevel framework. We assess the nite size performances of the schemes through a Monte Carlo study. The results show that for big sample sizes it always pays o to adopt an agnostic approach as the wild bootstrap outperforms other techniques.mixedModugno L; Giannerini SModugno L; Giannerini
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
We study two cluster-robust variance estimators (CRVEs) for regression models with clustering in two...
In this paper, we propose a model-free bootstrap method for the empirical process under absolute re...
In this paper we study the performance of the most popular bootstrap schemes for multilevel data. Al...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
The wild bootstrap was originally developed for regression models with heteroskedasticity of unknown...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
Some modifications and generalizations of the bootstrap procedurehave been proposed. In this note we...
Bootstrap techniques are widely used today in many other fields such as economics, Business Administ...
Consider a finite population $u$, which can be viewed as a realization of a superpopulation model. A...
Many empirical projects involve estimation with clustered data. While esti- mation is straightforwar...
Multilevel Models are widely used in organizational research, educational research, epidemiology, ps...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
We study two cluster-robust variance estimators (CRVEs) for regression models with clustering in two...
In this paper, we propose a model-free bootstrap method for the empirical process under absolute re...
In this paper we study the performance of the most popular bootstrap schemes for multilevel data. Al...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
The wild bootstrap was originally developed for regression models with heteroskedasticity of unknown...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
Some modifications and generalizations of the bootstrap procedurehave been proposed. In this note we...
Bootstrap techniques are widely used today in many other fields such as economics, Business Administ...
Consider a finite population $u$, which can be viewed as a realization of a superpopulation model. A...
Many empirical projects involve estimation with clustered data. While esti- mation is straightforwar...
Multilevel Models are widely used in organizational research, educational research, epidemiology, ps...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
We study asymptotic inference based on cluster-robust variance estimators for regression models with...
We study two cluster-robust variance estimators (CRVEs) for regression models with clustering in two...
In this paper, we propose a model-free bootstrap method for the empirical process under absolute re...