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Structural Equation Modeling of Vocabulary Size and Depth Using Conventional and Bayesian Methods

机译:常规和贝叶斯方法的词汇量和深度结构方程模型

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In classifications of vocabulary knowledge, vocabulary size and depth have often been separately conceptualized (Schmitt, 2014). Although size and depth are known to be substantially correlated, it is not clear whether they are a single construct or two separate components of vocabulary knowledge (Yanagisawa & Webb, 2020). This issue has not been addressed extensively in the literature and can be better examined using structural equation modeling (SEM), with measurement error modeled separately from the construct of interest. The current study reports on conventional and Bayesian SEM approaches (e.g., Muthén & Asparouhov, 2012) to examine the factor structure of the size and depth of second language vocabulary knowledge of Japanese adult learners of English. A total of 255 participants took five vocabulary tests. One test was designed to measure vocabulary size in terms of the number of words known, while the remaining four were designed to measure vocabulary depth in terms of word association, polysemy, and collocation. All tests used a multiple-choice format. The size test was divided into three subtests according to word frequency. Results from conventional and Bayesian SEM show that a correlated two-factor model of size and depth with three and four indicators, respectively, fit better than a single-factor model of size and depth. In the two-factor model, vocabulary size and depth were strongly correlated (r = .945 for conventional SEM and .943 for Bayesian SEM with cross loadings), but they were distinct. The implications of these findings are discussed.
机译:在词汇知识的分类中,词汇规模和深度往往是单独概念化(Schmitt,2014)。虽然已知大小和深度基本相关,但是目前尚不清楚它们是单一构建体或词汇知识的两个单独组件(Yanagisawa&Webb,2020)。该问题尚未在文献中广泛寻址,并且可以使用结构方程建模(SEM)进行更好地检查,测量误差与感兴趣的构造分开建模。目前关于常规和贝叶斯SEM方法的研究报告(例如,Muthén&Asparouhov,2012),以研究日本成人学习者英语的第二语言词汇知识的大小和深度因子结构。共有255名参与者采取了五个词汇测试。一个测试旨在根据已知的单词数量来测量词汇量,而剩余的四个旨在根据Word关联,多义和搭配来测量词汇深度。所有测试都使用多项选择格式。根据字频率将尺寸测试分为三个子测试。常规和贝叶斯界SEM的结果表明,分别具有三个和四个指示器的尺寸和深度相关的双因素模型,优于单因素尺寸和深度模型。在双因素模型中,词汇大小和深度强烈相关(用于传统SEM的r = .945和.943,用于交叉装载的贝叶斯SEM),但它们是截然不同的。讨论了这些发现的含义。

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