Educational Testing Service, Princeton, NJ, USA.
Br J Math Stat Psychol. 2010 Nov;63(Pt 3):557-74. doi: 10.1348/000711009X478580. Epub 2009 Dec 22.
In this study, eight statistical selection strategies were evaluated for selecting the parameterizations of log-linear models used to model the distributions of psychometric tests. The selection strategies included significance tests based on four chi-squared statistics (likelihood ratio, Pearson, Freeman-Tukey, and Cressie-Read) and four additional strategies (Akaike information criterion (AIC), Bayesian information criterion (BIC), consistent Akaike information criterion (CAIC), and a measure attributed to Goodman). The strategies were evaluated in simulations for different log-linear models of univariate and bivariate test-score distributions and two sample sizes. Results showed that all eight selection strategies were most accurate for the largest sample size considered. For univariate distributions, the AIC selection strategy was especially accurate for selecting the correct parameterization of a complex log-linear model and the likelihood ratio chi-squared selection strategy was the most accurate strategy for selecting the correct parameterization of a relatively simple log-linear model. For bivariate distributions, the likelihood ratio chi-squared, Freeman-Tukey chi-squared, BIC, and CAIC selection strategies had similarly high selection accuracies.
在这项研究中,评估了八种统计选择策略,用于选择用于对心理测验分布进行建模的对数线性模型的参数化。选择策略包括基于四个卡方统计量(似然比、皮尔逊、弗里曼-图基和克里塞-里德)和四个附加策略(赤池信息量准则(AIC)、贝叶斯信息量准则(BIC)、一致 AIC(CAIC)和归因于古德曼的度量)的显著性检验。这些策略在模拟中针对单变量和双变量测验分数分布的不同对数线性模型和两种样本量进行了评估。结果表明,对于考虑到的最大样本量,所有八种选择策略都是最准确的。对于单变量分布,AIC 选择策略特别适用于选择复杂对数线性模型的正确参数化,而似然比卡方选择策略是选择相对简单对数线性模型的正确参数化的最准确策略。对于双变量分布,似然比卡方、弗里曼-图基卡方、BIC 和 CAIC 选择策略具有相似的高选择准确性。