Latent Growth Curve Modeling of Ordinal Scales: A Comparison of Three Strategies

Chongming Yang, J. Olsen, S. Coyne, Jing Yu
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引用次数: 1

Abstract

Ordinal scales can be used in latent growth curve modeling in three ways: mean, weighted mean scores, and factors measured by scale items. Sum and mean scores are commonly used in growth curve modeling in spite of certain discouragement. It was unclear how much bias these practices could produce in terms of the change rates and patterns. This study compared three methods with Monte Carlo Simulations under different number of response categories of the items, in terms of five key parameters of growth curve modeling. The hypothetical population models were derived from real empirical data to generate datasets of binary, trichotomous, five- and seven-point scales with sample size of 300. Latent growth curve modeling of mean, weighted mean, and factors measured by the ordinal scales were respectively fit to these datasets. Results indicated that modeling the factors that are measured with ordinal scales yield the fewest biases. Biases of modeling the means and weighted of the scales were under one decimal point in the change rates, whereas biases in the variances and covariance of the intercept and slope factors were large. In conclusion, it is inadvisable to use means or weighted means of ordinal scales for latent growth curve modeling. It produces the best results modeling the factors that are measured with the ordinal scales.
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有序尺度的潜在增长曲线建模:三种策略的比较
在潜在增长曲线建模中,顺序量表可以通过三种方式使用:平均、加权平均得分和量表项目测量的因素。和和平均分数是生长曲线建模中常用的方法,尽管有一些缺点。目前尚不清楚这些做法在变化速度和模式方面可能产生多大的偏差。本研究从生长曲线建模的5个关键参数出发,比较了蒙特卡罗模拟在不同项目响应类别数下的3种方法。根据实际经验数据推导出假设的人口模型,生成样本容量为300的二分制、三分制、五分制和七分制数据集。分别对这些数据集进行均值、加权均值和顺序尺度测量因子的潜在生长曲线模型拟合。结果表明,用有序尺度测量的因素建模产生的偏差最小。在变化率中,对尺度均值和加权的建模偏差小于一个小数点,而截距因子和斜率因子的方差和协方差偏差较大。综上所述,不宜采用顺序尺度的均值或加权均值进行潜在生长曲线建模。它产生了最好的结果建模的因素,测量与序数尺度。
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