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Assessing Measurement Invariance in Multiple-Group Latent Profile Analysis

机译:在多组潜在剖面分析中评估测量不变性

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摘要

The study of measurement invariance in latent profile analysis (LPA) indicates whether the latent profiles differ across known subgroups (e.g., gender). The purpose of the present study was to examine the impact of noninvariance on the relative bias of LPA parameter estimates and on the ability of the likelihood ratio test (LRT) and information criteria statistics to reject the hypothesis of invariance. A Monte Carlo simulation study was conducted in which noninvariance was defined as known group differences in the indicator means in each profile. Results indicated that parameter estimates were biased in conditions with medium and large noninvariance. The LRT and AIC detected noninvariance in most conditions with small sample sizes, while the BIC and adjusted BIC needed larger sample sizes to detect noninvariance. Implications of the results are discussed along with recommendations for future research.
机译:对潜在特征分析(LPA)中的测量不变性的研究表明,潜在特征在不同的已知亚组(例如性别)之间是否存在差异。本研究的目的是检验不变性对LPA参数估计值相对偏差的影响,以及对似然比检验(LRT)和信息标准统计数据拒绝不变性假设的能力的影响。进行了蒙特卡洛模拟研究,其中不变性定义为每个分布图中指标均值的已知组差异。结果表明,参数估计在中等和大不变性条件下存在偏差。 LRT和AIC在大多数情况下以小样本量检测到不变性,而BIC和调整后的BIC需要更大的样本量来检测不变性。讨论了结果的含义以及对未来研究的建议。

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