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  • 标题:Log-linear modeling and two-sample CFA in the searchof discrimination types
  • 本地全文:下载
  • 作者:Mark Stemmler ; C. Raymond Bingham
  • 期刊名称:Psychology Science
  • 印刷版ISSN:1614-9947
  • 出版年度:2003
  • 卷号:45
  • 期号:02
  • 出版社:Pabst Science Publishers
  • 摘要:

    Two-sample configural frequency (CFA) is suggested as a useful statistical tool to compare data from pretest-posttest-designs. The investigated data may be difference or improvement scores. The above procedure is recommended because improvement scores from two dependent samples, although metrically scored, are usually non-normally distributed and therefore not suitable for parametric comparisons. The two-sample CFA is compared to log-linear modeling (LLM); the similarities and dissimilarites between the two statistical methods are presented. LLM takes a model fitting approach, that is LLM tests the goodness-of-fit of a null model, which assumes no interactions between the sample or grouping variable and the outcome variables. Instead of a global approach as used by LLM, CFA takes a local or cell level approach, searching for differences between the hypothesized (null) model and the empirical data. The Fisher-Yates test is introduced as a statistic to test for cell patterns or configurations which discriminate between the two samples under investigation. Real data from educational psychological research is used to demonstrate univariate and bivariate two-sample comparisons.

  • 关键词:Two-sample comparison, Configural Frequency Analysis (CFA), two-sample CFA, log-linear modeling (LLM), nonparametric testing, contingency table analysis
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