An iteratively reweighted least squares (IRLS) method is proposed for estimating polyserial and polychoric correlation coefficients in this paper. It iteratively calculates the slopes in a series of weighted linear regression models fitting on conditional expected values. For polyserial correlation coefficient, conditional expectations of the latent predictor is derived from the observed ordinal categorical variable, and the regression coefficient is obtained using weighted least squares method. In estimating polychoric correlation coefficient, conditional expectations of the response variable and the predictor are updated in turns. Standard errors of the estimators are obtained using the delta method based on data summaries instead of the whole data. Conditional univariate normal distribution is exploited and a single integral is numerically evaluated in the proposed algorithm, comparing to the double integral computed numerically based on the bivariate normal distribution in the traditional maximum likelihood (ML) approaches. This renders the new algorithm very fast in estimating both polyserial and polychoric correlation coefficients. Thorough simulation studies are conducted to compare the performances of the proposed method with the classical ML methods. Real data analyses illustrate the advantage of the new method in computation speed.
翻译:提议采用迭代再加权最小方(IRLS)法来估计本文中的多星和多星相关系数。它迭代计算一系列按有条件预期值调整的加权线性回归模型中的斜度。对于多星相关系数,根据观察到的绝对绝对变量得出潜在预测者有条件的预期值,采用加权最小方方法得出回归系数。在估计多星相关系数时,对响应变量和预测器的有条件预期值进行逐次更新。使用基于数据摘要而非整个数据的三角计算法获得了估计器的标准差错。利用了条件单线性正常分布法,并在拟议算法中用数字方式对单一整体进行了评估,比较了基于传统最大可能性(ML)方法双差正常分布法的双重综合数字计算法。这使得新的算法在估计多星和多星相关系数时非常快速。进行了索罗夫模拟研究,以比较拟议方法的性能与古典 ML方法的优势。真实数据分析说明了新方法在计算速度中的优势。