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Using the Comparison Curve Fix Index (CCFI) in Taxometric Analyses: Averaging Curves, Standard Errors, and CCFI Profiles

机译:使用税收分析中的比较曲线修复索引(CCFI):平均曲线,标准错误和CCFI配置文件

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摘要

Determining whether a construct is more appropriately conceptualized and assessed in a categorical or a dimensional manner has received considerable research attention in recent years. There are a variety of statistical techniques to address this empirically, and Meehl's (1995) taxometric method has been among the most widely used methods applied to constructs in the areas of personality and psychopathology. In taxometric analysis, the comparison curve fit index (CCFI; Ruscio, Ruscio, & Meron, 2007) is an objective measure of whether parallel analysis of categorical or dimensional comparison data better reproduce empirical data results. The development and use of the CCFI helps to reduce the subjectivity involved in performing taxometric analyses and interpreting the results. In a series of simulation studies, we examine the use of the CCFI to flesh out some empirically supported guidelines. We find that a panel of curves should be averaged to calculate a single CCFI value (rather than calculating the CCFI for each curve and averaging these values), that an ambiguous range of CCFI values should be defined using a fixed-width interval (rather than a multiple of the estimated standard error), and that constructing a CCFI profile can help to differentiate categorical and dimensional data and provide a less biased and more precise estimate of the taxon base rate than conventional methods. Implications of these findings for taxometric research relevant to psychological assessment are discussed along with ways to perform analyses consistent with these recommendations.
机译:确定构建体是否更适当地概念化和以分类或尺寸方式评估近年来接受了相当大的研究关注。有多种统计技术来解决这个经验,而Meehl(1995)税收方法是应用于人格和精神病理学领域的结构中最广泛使用的方法。在税率分析中,比较曲线拟合指数(CCFI; Ruscio,Ruscio,&Meron,2007)是对分类或尺寸比较数据的并行分析更好地再现经验数据结果的客观度量。 CCFI的开发和使用有助于降低执行税率分析和解释结果所涉及的主观性。在一系列仿真研究中,我们研究了CCFI的使用,以肉体一些经验支持的指导方针。我们发现,应平均一个曲线面板来计算单个CCFI值(而不是计算每个曲线的CCFI并平均这些值),所以应该使用固定宽度间隔(而不是)定义CCFI值的模糊范围估计标准误差的倍数),并且构建CCFI配置文件可以帮助分区分类和尺寸数据,并提供与传统方法的分类率的较小偏差和更精确的估计。这些调查结果对与心理评估相关的税收研究的影响以及与这些建议一致的分析进行了讨论。

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