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首页> 外文期刊>Australian & New Zealand journal of statistics >AN EVALUATION OF NON-ITERATIVE METHODS FOR ESTIMATING THE LINEAR-BY-LINEAR PARAMETER OF ORDINAL LOG-LINEAR MODELS
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AN EVALUATION OF NON-ITERATIVE METHODS FOR ESTIMATING THE LINEAR-BY-LINEAR PARAMETER OF ORDINAL LOG-LINEAR MODELS

机译:估计对数线性模型的逐线性参数的非迭代方法的评估

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摘要

Parameter estimation for association and log-linear models is an important aspect of the analysis of cross-classified categorical data. Classically, iterative procedures, including Newton's method and iterative scaling, have typically been used to calculate the maximum likelihood estimates of these parameters. An important special case occurs when the categorical variables are ordinal and this has received a considerable amount of attention for more than 20 years. This is because models for such cases involve the estimation of a parameter that quantifies the linear-by-linear association and is directly linked with the natural logarithm of the common odds ratio. The past five years has seen the development of non-iterative procedures for estimating the linear-by-linear parameter for ordinal log-linear models. Such procedures have been shown to lead to numerically equivalent estimates when compared with iterative, maximum likelihood estimates. Such procedures also enable the researcher to avoid some of the computational difficulties that commonly arise with iterative algorithms. This paper investigates and evaluates the performance of three non-iterative procedures for estimating this parameter by considering 14 contingency tables that have appeared in the statistical and allied literature. The estimation of the standard error of the association parameter is also considered.
机译:关联模型和对数线性模型的参数估计是交叉分类的分类数据分析的重要方面。传统上,通常使用迭代程序(包括牛顿法和迭代缩放)来计算这些参数的最大似然估计。当分类变量为序数并且在20多年来受到了相当多的关注时,就会发生一个重要的特殊情况。这是因为针对此类情况的模型涉及对参数进行估计,该参数量化了逐线性关联,并直接与常见优势比的自然对数关联。在过去的五年中,已经出现了用于估计序数对数线性模型的线性参数的非迭代过程。与迭代的最大似然估计相比,这种程序已显示出数值上相等的估计。这样的过程还使研究人员能够避免迭代算法通常会出现的一些计算困难。本文通过考虑统计和相关文献中出现的14个列联表,调查和评估了三种用于估计该参数的非迭代过程的性能。还考虑了关联参数的标准误差的估计。

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