학술논문

Evaluating the efficiency of treatment comparison in crossover design by allocating subjects based on ranked auxiliary variable
Document Type
Academic Journal
Source
CSAM(Communications for Statistical Applications and Methods). 2016-11 23(6):543-553
Subject
crossover design
experimental design
Latin square design
ranked auxiliary covariate
ranked set sampling
TDNF
treatment allocation method
weight gain
Language
Korean
Abstract
The validity of statistical inference depends on proper randomization methods. However, even with proper randomization, we can have imbalanced with respect to important characteristics. In this paper, we introduce a method based on ranked auxiliary variables for treatment allocation in crossover designs using Latin squares models. We evaluate the improvement of the efficiency in treatment comparisons using the proposed method. Our simulation study reveals that our proposed method provides a more powerful test compared to simple randomization with the same sample size. The proposed method is illustrated by conducting an experiment to compare two different concentrations of titanium dioxide nanofiber (TDNF) on rats for the purpose of comparing weight gain.

Online Access