Dyadic data are common in the social sciences, although inference for such settings involves accounting for a complex clustering structure. Many analyses in the social sciences fail to account for the fact that multiple dyads share a member, and that errors are thus likely correlated across these dyads. We propose a non-parametric, sandwich-type robust variance estimator for linear regression to account for such clustering in dyadic data. We enumerate conditions for estimator consistency. We also extend our results to repeated and weighted observations, including directed dyads and longitudinal data, and provide an implementation for generalized linear models such as logistic regression. We examine empirical performance with simulations and...
This paper studies the identification and estimation of a nonparametric nonseparable dyadic model wh...
In linear regression analysis, the estimator of the variance of the estimator of the regression coef...
We develop a general approach to robust inference about a scalar parameter of interest when the data...
Dyadic data are common in the social sciences, although inference for such settings involves account...
Dyadic data are common in the social sciences, although inference for such settings in-volves accoun...
In this paper we propose a variance estimator for the OLS estimator as well as for nonlinear estimat...
In this paper we propose a new variance estimator for OLS as well as for non-linear estimators such ...
The replication archive contains R and Stata scripts as well as datasets to reproduce simulation and...
<p>This article is concerned with inference in the linear model with dyadic data. Dyadic data are in...
When using dyadic data (i.e., data indexed by pairs of units, such as trade flow data between two co...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
Often in biomedical studies, the event of interest is recurrent and within-subject events cannot usu...
Dyadic data is often encountered when quantities of interest are associated with the edges of a netw...
This paper studies the identification and estimation of a nonparametric nonseparable dyadic model wh...
In linear regression analysis, the estimator of the variance of the estimator of the regression coef...
We develop a general approach to robust inference about a scalar parameter of interest when the data...
Dyadic data are common in the social sciences, although inference for such settings involves account...
Dyadic data are common in the social sciences, although inference for such settings in-volves accoun...
In this paper we propose a variance estimator for the OLS estimator as well as for nonlinear estimat...
In this paper we propose a new variance estimator for OLS as well as for non-linear estimators such ...
The replication archive contains R and Stata scripts as well as datasets to reproduce simulation and...
<p>This article is concerned with inference in the linear model with dyadic data. Dyadic data are in...
When using dyadic data (i.e., data indexed by pairs of units, such as trade flow data between two co...
Many important social and economic variables are naturally defined for pairs of agents (or dyads). E...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
Often in biomedical studies, the event of interest is recurrent and within-subject events cannot usu...
Dyadic data is often encountered when quantities of interest are associated with the edges of a netw...
This paper studies the identification and estimation of a nonparametric nonseparable dyadic model wh...
In linear regression analysis, the estimator of the variance of the estimator of the regression coef...
We develop a general approach to robust inference about a scalar parameter of interest when the data...