We provide a principled way for investigators to analyze randomized experiments when the number of covariates is large. Investigators often use linear multivariate regression to analyze randomized experiments instead of simply reporting the difference of means between treatment and control groups. Their aim is to reduce the variance of the estimated treatment effect by adjusting for covariates. If there are a large number of covariates relative to the number of observations, regression may perform poorly because of overfitting. In such cases, the least absolute shrinkage and selection operator (Lasso) may be helpful. We study the resulting Lasso-based treatment effect estimator under the Neyman-Rubin model of randomized experiments. We pres...
To perform regression analysis on high-dimensional data with more variables than observations, the l...
International audienceWe present a new covariate-adjusted response-adaptive randomized controlled tr...
Randomized experiments are the gold standard for causal inference, and justify simple comparisons ac...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
In randomized experiments, linear regression is often used to adjust for imbalances in covariates be...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
The least absolute selection and shrinkage operator (LASSO) is a method of estimation for linear mod...
The "least absolute shrinkage and selection operator" ('lasso') has been widely used in regression s...
© 2009 Australian Statistical Publishing Association Inc. Copyright © 2009 John Wiley & Sons, Inc.Th...
Regression with the lasso penalty is a popular tool for performing dimension reduction when the numb...
Abstract: Regression with the lasso penalty is a popular tool for performing di-mension reduction wh...
The least absolute shrinkage and selection operator ('lasso') has been widely used in regr...
Linear regression adjustments for pre-treatment covariates are widely used in economics to lower the...
The least absolute deviation (LAD) regression is a useful method for robust regression, and the leas...
The abundance of available digital big data has created new challenges in identifying relevant varia...
To perform regression analysis on high-dimensional data with more variables than observations, the l...
International audienceWe present a new covariate-adjusted response-adaptive randomized controlled tr...
Randomized experiments are the gold standard for causal inference, and justify simple comparisons ac...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
In randomized experiments, linear regression is often used to adjust for imbalances in covariates be...
We provide a principled way for investigators to analyze randomized experiments when the number of c...
The least absolute selection and shrinkage operator (LASSO) is a method of estimation for linear mod...
The "least absolute shrinkage and selection operator" ('lasso') has been widely used in regression s...
© 2009 Australian Statistical Publishing Association Inc. Copyright © 2009 John Wiley & Sons, Inc.Th...
Regression with the lasso penalty is a popular tool for performing dimension reduction when the numb...
Abstract: Regression with the lasso penalty is a popular tool for performing di-mension reduction wh...
The least absolute shrinkage and selection operator ('lasso') has been widely used in regr...
Linear regression adjustments for pre-treatment covariates are widely used in economics to lower the...
The least absolute deviation (LAD) regression is a useful method for robust regression, and the leas...
The abundance of available digital big data has created new challenges in identifying relevant varia...
To perform regression analysis on high-dimensional data with more variables than observations, the l...
International audienceWe present a new covariate-adjusted response-adaptive randomized controlled tr...
Randomized experiments are the gold standard for causal inference, and justify simple comparisons ac...