Researchers in political science often estimate linear models of continuous outcomes using least squares. While it is well-known that least-squares estimates are sensitive to single, unusual data points, this knowledge has not led to careful practices when using least-squares estimators. Using statistical theory, Monte Carlo simulations, and an applied example, we highlight the importance of using more robust estimators along with variable transformations. We also discuss several approaches to detect, summarize, and communicate the influence of particular data points. We conclude with a reanalysis of Clark and Golder (2006), showing that the residuals are highly non-normal under their model specification and that an alternative, robust esti...
Regression analysis is one of the most extensively used statistical tools applied across different f...
Dummy variable maximum likelihood (ML) estimation for binary response panel models struggles to esti...
Political scientists have long been concerned about the validity of survey measurements. Although ma...
Models designed for limited dependent variables are increasingly common in political science. Resea...
State politics researchers commonly employ ordinary least squares (OLS) regression or one of its var...
Questions of causation are important issues in empirical research on political behavior. Most of the...
Research in political science is often concerned with modeling dependent variables that are proporti...
The present study investigates parameter estimation under the simple linear regression model for sit...
The Cox proportional hazards model is ubiquitous in time-to-event studies of political processes. Pl...
Osborne and Waters (2002) focused on checking some of the assumptions of multiple linear.regression....
Research in political science is often concerned with modeling dependent variables that are proporti...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
Political scientists commonly focus on quantities of interest computed from model coefficients rathe...
Dramatic world change has stimulated interest in research questions about the dynamics of politics. ...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
Regression analysis is one of the most extensively used statistical tools applied across different f...
Dummy variable maximum likelihood (ML) estimation for binary response panel models struggles to esti...
Political scientists have long been concerned about the validity of survey measurements. Although ma...
Models designed for limited dependent variables are increasingly common in political science. Resea...
State politics researchers commonly employ ordinary least squares (OLS) regression or one of its var...
Questions of causation are important issues in empirical research on political behavior. Most of the...
Research in political science is often concerned with modeling dependent variables that are proporti...
The present study investigates parameter estimation under the simple linear regression model for sit...
The Cox proportional hazards model is ubiquitous in time-to-event studies of political processes. Pl...
Osborne and Waters (2002) focused on checking some of the assumptions of multiple linear.regression....
Research in political science is often concerned with modeling dependent variables that are proporti...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
Political scientists commonly focus on quantities of interest computed from model coefficients rathe...
Dramatic world change has stimulated interest in research questions about the dynamics of politics. ...
The assumptions underlying the Ordinary Least Squares (OLS) model are regularly and sometimes severe...
Regression analysis is one of the most extensively used statistical tools applied across different f...
Dummy variable maximum likelihood (ML) estimation for binary response panel models struggles to esti...
Political scientists have long been concerned about the validity of survey measurements. Although ma...