a The College of New Jersey.
b University of Pennsylvania.
Multivariate Behav Res. 2007 Apr-Jun;42(2):349-86. doi: 10.1080/00273170701360795.
Meehl's taxometric method was developed to distinguish categorical and continuous constructs. However, taxometric output can be difficult to interpret because expected results for realistic data conditions and differing procedural implementations have not been derived analytically or studied through rigorous simulations. By applying bootstrap methodology, one can generate empirical sampling distributions of taxometric results using data-based estimates of relevant population parameters. We present iterative algorithms for creating bootstrap samples of taxonic and dimensional comparison data that reproduce important features of the research data with good precision and negligible bias. In a series of studies, we demonstrate the utility of these comparison data as an interpretive aid in taxometric research. Strengths and limitations of the approach are discussed along with directions for future research.
米厄尔的分类测量法旨在区分类别和连续的结构。然而,分类测量的结果可能难以解释,因为实际数据条件和不同程序实现的预期结果尚未通过分析或严格的模拟研究得出。通过应用自举方法,可以使用基于数据的相关总体参数的估计值生成分类测量结果的经验抽样分布。我们提出了迭代算法,用于创建重现研究数据重要特征的分类和维度比较数据的自举样本,具有良好的精度和可忽略的偏差。在一系列研究中,我们展示了这些比较数据作为分类研究中解释性辅助工具的效用。还讨论了该方法的优缺点以及未来研究的方向。