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On the chi-square approximation to the exact distribution of goodness-of-fit statistics in multinomial models with composite hypotheses

机译:关于带有复合假设的多项式模型中拟合优度统计的精确分布的卡方逼近

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摘要

Multinomial models are increasingly being used in psychology, and this use always requires estimating model parameters and testing goodness of fit with a composite null hypothesis. Goodness of fit is customarily tested with recourse to the asymptotic approximation to the distribution of the statistics. An assessment of the quality of this approximation requires a comparison with the exact distribution, but how to compute this exact distribution when parameters are estimated from the data appears never to have been defined precisely. The main goal of this paper is to compare two different approaches to defining this exact distribution. One of the approaches uses the marginal distribution and is, therefore, independent of the data; the other approach uses the conditional distribution of the statistics given the estimated parameters and, therefore, is data-dependent. We carried out a thorough study involving various parameter estimation methods and goodness-of-fit statistics, all of them members of the general class of power-divergence measures. Included in the study were multinomial models with three to five cells and up to three parameters. Our results indicate that the asymptotic distribution is rarely a good approximation to the exact marginal distribution of the statistics, whereas it is a good approximation to the exact conditional distribution only when the vector of expected frequencies is interior to the sample space of the multinomial distribution.
机译:心理学中越来越多地使用多项式模型,并且这种使用总是需要估计模型参数并使用复合零假设来检验拟合的优度。通常根据统计分布的渐近近似来检验拟合优度。对这种近似质量的评估需要与精确分布进行比较,但是似乎从未精确定义过如何根据数据估算参数时如何计算此精确分布。本文的主要目的是比较两种不同的方法来定义这种精确的分布。一种方法是使用边际分布,因此与数据无关。另一种方法是在给定估计参数的情况下使用统计信息的条件分布,因此与数据有关。我们进行了深入的研究,涉及各种参数估计方法和拟合优度统计,所有这些方法都是功率散度度量的一般类别。该研究包括具有三至五个单元格和最多三个参数的多项式模型。我们的结果表明,渐近分布很少很好地近似于统计的精确边际分布,而仅当期望频率的向量在多项式分布的样本空间内部时,它才是近似精确的条件分布的良好近似。

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