A common procedure when combining two multivariate unbiased estimates (or forecasts) is the covariance adjustment technique (CAT). Here the optimal combination weights depend on the covariance structure of the estimators. In practical applications, however, this covariance structure is hardly ever known and, thus, has to be estimated. An effect of this drawback may be that the theoretically best method is no longer the best. In a simulation study (using normally distributed data) three different variants of CAT are compared with respect to their accuracy. These variants are different in the portion of the covariance structure that is estimated. We characterize which variant is appropriate in different situations and quantify the gains and l...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
The most basic approach to causal inference measures the response of a system or population to diffe...
Background. Univariate meta-analysis (UM) procedure, as a technique that provides a single overall r...
A common procedure when combining two multivariate unbiased estimates (or forecasts) is the covarian...
We simulate forecast errors with different variance-covariance structures based on macroeconomic dat...
Covariate adjustment methods are frequently used when baseline covariate information is available fo...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
There is considerable debate regarding whether and how covariate adjusted analyses should be used in...
Analysis of covariance is a well-utilized statistical methodology. The procedure involves a series o...
Adjustment for baseline covariates in randomized trials has been shown to lead to gains in power and...
The type I error control and power of a number of analysis of covariance (ANCOVA) and randomized blo...
BACKGROUND: It has long been advised to account for baseline covariates in the analysis of confirmat...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
In this paper, prediction provides the basis for unifying the procedures of covariance adjustment an...
A simulation study was conducted to compare methods to estimate variance components for ovulation ra...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
The most basic approach to causal inference measures the response of a system or population to diffe...
Background. Univariate meta-analysis (UM) procedure, as a technique that provides a single overall r...
A common procedure when combining two multivariate unbiased estimates (or forecasts) is the covarian...
We simulate forecast errors with different variance-covariance structures based on macroeconomic dat...
Covariate adjustment methods are frequently used when baseline covariate information is available fo...
Background: It has long been advised to account for baseline covariates in the analysis of confirmat...
There is considerable debate regarding whether and how covariate adjusted analyses should be used in...
Analysis of covariance is a well-utilized statistical methodology. The procedure involves a series o...
Adjustment for baseline covariates in randomized trials has been shown to lead to gains in power and...
The type I error control and power of a number of analysis of covariance (ANCOVA) and randomized blo...
BACKGROUND: It has long been advised to account for baseline covariates in the analysis of confirmat...
This thesis consists of three papers on matching and weighting methods for causal inference. The fir...
In this paper, prediction provides the basis for unifying the procedures of covariance adjustment an...
A simulation study was conducted to compare methods to estimate variance components for ovulation ra...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
The most basic approach to causal inference measures the response of a system or population to diffe...
Background. Univariate meta-analysis (UM) procedure, as a technique that provides a single overall r...