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On the Relationship Between the Johnson-Neyman Region of Significance and Statistical Tests of Parallel Within-Group Regressions
David Rogosa
The University of Chicago
The form of the Johnson-Neyman region of significance is shown to be determined by the statistic for testing the null hypothesis that the population within-group regressions are parallel. Results are obtained for both simultaneous and nonsimultaneous regions of significance.
Educational and Psychological Measurement, Vol. 41, No. 1,
73-84 (1981)
DOI: 10.1177/001316448104100108

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