首页> 外文期刊>Frontiers in Psychology >Modeling Wording Effects Does Not Help in Recovering Uncontaminated Person Scores: A Systematic Evaluation With Random Intercept Item Factor Analysis
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Modeling Wording Effects Does Not Help in Recovering Uncontaminated Person Scores: A Systematic Evaluation With Random Intercept Item Factor Analysis

机译:建模措辞效应无助于恢复未污染的人分数:随机截距项目因子分析进行系统评估

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The item wording (or keying) effect consists of logically inconsistent answers to positively and negatively worded items that tap into similar (but polarly opposite) content. Previous research has shown that this effect can be successfully modeled through the random intercept item factor analysis (RIIFA) model, as evidenced by the improvements in the model fit in comparison to models that only contain substantive factors. However, little is known regarding the capability of this model in recovering the uncontaminated person scores. To address this issue, the study analyzes the performance of the RIIFA approach across three types of wording effects proposed in the literature: carelessness, item verification difficulty, and acquiescence. In the context of unidimensional substantive models, four independent variables were manipulated, using Monte Carlo methods: type of wording effect, amount of wording effect, sample size, and test length. The results corroborated previous findings by showing that the RIIFA models were consistently able to account for the variance in the data, attaining an excellent fit regardless of the amount of bias. Conversely, the models without the RIIFA factor produced increasingly a poorer fit with greater amounts of wording effects. Surprisingly, however, the RIIFA models were not able to better estimate the uncontaminated person scores for any type of wording effect in comparison to the substantive unidimensional models. The simulation results were then corroborated with an empirical dataset, examining the relationship between learning strategies and personality with grade point average in undergraduate studies. The apparently paradoxical findings regarding the model fit and the recovery of the person scores are explained, considering the properties of the factor models examined.
机译:项目措辞(或键控)效果包括逻辑上不一致的答案,对挖掘成相似(但极性相反)内容的阳性和负面措辞的答案。以前的研究表明,通过随机截距项目因子分析(RIIFA)模型可以成功建模这种效果,如模型适合的模型的改进所证明,与仅包含实质性因素的模型相比。然而,关于该模型在恢复未受污染的人分数时的能力很少。为了解决这个问题,研究分析了文献中提出的三种措辞效果的Riifa方法的性能:粗心,项目验证难度和默许。在非维金实质模型的背景下,使用Monte Carlo方法操纵四个独立变量:措辞效果,措辞效果,样品大小和测试长度的类型。结果通过表明RIIFA模型一致能够考虑数据的方差,无论偏差的量如何,都可以始终如一地证明了先前的发现。相反,没有Riifa因子的模型产生了越来越较差的差,具有更大的措辞效果。然而,令人惊讶的是,与实质性单向模型相比,Riifa模型无法更好地估计任何类型的措辞效果。然后用经验数据集进行仿真结果,检查学习策略与人格之间的关系,本科研究中的平均值。考虑到所检查因子模型的性质,解释了关于模型合适和恢复人员分数的显现矛盾的结果。

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