In order to measure the association between an exposure variable X and an outcome variable Y , we introduce the effect-control sampling design and we consider the family of symmetric association measures. Focusing on the case of binary exposure and outcome variables, a general estimator of such measures is proposed and its asymptotic properties are also discussed. We define an allocation procedure for a stratified effect-control design, which is optimal in terms of the variance of such an estimator. Finally, small sample behavior is investigated by Monte Carlo simulation for a measure belonging to the family, which we believe particularly interesting as it possess the appealing property of being normalized
Borgoni, R., Marasini, D., Quatto, P. (2013). Symmetric Association Measures in Effect-control Sampling. In N. Torelli (a cura di), Advances in Theoretical and Applied Statistics (pp. 257-267). Springer International Publishing [10.1007/978-3-642-35588-2_24].
Symmetric Association Measures in Effect-control Sampling
Borgoni, R;Marasini, D;Quatto, P
2013
Abstract
In order to measure the association between an exposure variable X and an outcome variable Y , we introduce the effect-control sampling design and we consider the family of symmetric association measures. Focusing on the case of binary exposure and outcome variables, a general estimator of such measures is proposed and its asymptotic properties are also discussed. We define an allocation procedure for a stratified effect-control design, which is optimal in terms of the variance of such an estimator. Finally, small sample behavior is investigated by Monte Carlo simulation for a measure belonging to the family, which we believe particularly interesting as it possess the appealing property of being normalizedI documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.