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Chi-Squared Test of Fit and Sample Size-A Comparison between a Random Sample Approach and a Chi-Square Value Adjustment Method

机译:拟合和样本大小的卡方检验-随机样本方法和卡方值调整方法之间的比较

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摘要

Chi-square statistics are commonly used for tests of fit of measurement models. Chi-square is also sensitive to sample size, which is why several approaches to handle large samples in test of fit analysis have been developed. One strategy to handle the sample size problem may be to adjust the sample size in the analysis of fit. An alternative is to adopt a random sample approach. The purpose of this study was to analyze and to compare these two strategies using simulated data. Given an original sample size of 21,000, for reductions of sample sizes down to the order of 5,000 the adjusted sample size function works as good as the random sample approach. In contrast, when applying adjustments to sample sizes of lower order the adjustment function is less effective at approximating the chi-square value for an actual random sample of the relevant size. Hence, the fit is exaggerated and misfit under-estimated using the adjusted sample size function. Although there are big differences in chi-square values between the two approaches at lower sample sizes, the inferences based on the p-values may be the same.
机译:卡方统计通常用于测试测量模型的拟合度。卡方对样本大小也很敏感,这就是为什么开发了几种在拟合分析测试中处理大样本的方法的原因。处理样本量问题的一种策略可能是在拟合分析中调整样本量。另一种选择是采用随机样本方法。这项研究的目的是使用模拟数据来分析和比较这两种策略。给定原始样本大小为21,000,对于将样本大小减小至5,000的数量级,调整后的样本大小函数的效果与随机样本方法一样好。相反,当对低阶样本大小进行调整时,调整函数在逼近相关大小的实际随机样本的卡方值时效果较差。因此,使用调整后的样本量函数会夸大拟合,而拟合不足会被低估。尽管在较小样本量下两种方法之间的卡方值存在很大差异,但基于p值的推论可能是相同的。

著录项

  • 来源
    《Journal of applied measurement》 |2015年第2期|204-217|共14页
  • 作者

    Daniel Bergh;

  • 作者单位

    Karlstad University, Centre for Research on Child and Adolescent Mental Health, SE-651 88 Karlstad, Sweden;

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  • 原文格式 PDF
  • 正文语种 eng
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