This study develops cluster robust inference methods for panel quantile regression (QR) models with individual fixed effects, allowing for temporal correlation within each individual. The conventional QR standard errors can seriously underestimate the uncertainty of estimators and, therefore, overestimate the significance of effects, when outcomes are serially correlated. Thus, we propose a clustered covariance matrix (CCM) estimator to solve this problem. The CCM estimator is an extension of the heteroskedasticity and autocorrelation consistent covariance matrix estimator for QR models with fixed effects. The autocovariance element in the CCM estimator can be substantially biased, due to the incidental parameter problem. Thus, we develop a...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
Abstract. This paper proposes a penalized quantile regression estimator for panel data that explicit...
AbstractWe study the properties of the quantile regression estimator when data are sampled from inde...
We show that the quantile regression estimator is consistent and asymptotically normal when the erro...
We propose a generalization of the linear quantile regression model to accommodate possibilities aff...
Selecting an estimator for the covariance matrix of a regression's parameter estimates is an importa...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
This paper studies a cluster robust variance estimator proposed by Chiang, Hansen and Sasaki (2022) ...
Panel data is a group of many individual units observed for a specific time period. In general, rese...
<p>In this article I develop a wild bootstrap procedure for cluster-robust inference in linear quant...
The conventional heteroskedasticity-robust (HR) variance matrix estimator for cross-sectional regres...
In this paper I develop a wild bootstrap procedure for cluster-robust inference in linear quantile r...
In this paper I develop a wild bootstrap procedure for cluster-robust inference in linear quantile r...
In this paper I develop a wild bootstrap procedure for cluster-robust inference in linear quantile r...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
Abstract. This paper proposes a penalized quantile regression estimator for panel data that explicit...
AbstractWe study the properties of the quantile regression estimator when data are sampled from inde...
We show that the quantile regression estimator is consistent and asymptotically normal when the erro...
We propose a generalization of the linear quantile regression model to accommodate possibilities aff...
Selecting an estimator for the covariance matrix of a regression's parameter estimates is an importa...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
This paper studies a cluster robust variance estimator proposed by Chiang, Hansen and Sasaki (2022) ...
Panel data is a group of many individual units observed for a specific time period. In general, rese...
<p>In this article I develop a wild bootstrap procedure for cluster-robust inference in linear quant...
The conventional heteroskedasticity-robust (HR) variance matrix estimator for cross-sectional regres...
In this paper I develop a wild bootstrap procedure for cluster-robust inference in linear quantile r...
In this paper I develop a wild bootstrap procedure for cluster-robust inference in linear quantile r...
In this paper I develop a wild bootstrap procedure for cluster-robust inference in linear quantile r...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
This paper addresses inference in large panel data models in the presence of both cross-sectional an...
Abstract. This paper proposes a penalized quantile regression estimator for panel data that explicit...