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Describe the main characteristics of the FF distribution when the null hypothesis is true. Specifically, explain its shape, the values around which most computed FF ratios cluster, and the parameters that determine its precise curve.

Question: Describe the main characteristics of the FF distribution when the null hypothesis is true. Specifically, explain its shape, the values around which most computed FF ratios cluster, and the parameters that determine its precise curve.

Sample answer: When the null hypothesis is true, the computed FF ratios follow the FF distribution. This distribution is strictly unimodal and positively skewed, with the majority of values clustering around 11. The precise shape of the distribution is dynamic and depends entirely on two parameters: the between-groups degrees of freedom (dfBdf_B) and the within-groups degrees of freedom (dfWdf_W).

Key points:

  • The FF distribution is strictly unimodal and positively skewed when the null hypothesis is true.
  • The majority of computed FF values cluster around 11.
  • The precise shape of the distribution depends entirely on two parameters: between-groups degrees of freedom (dfBdf_B) and within-groups degrees of freedom (dfWdf_W).

Rubric: The response must accurately state that the distribution is unimodal and positively skewed, that values cluster around 11, and that the shape depends on the two parameters: between-groups degrees of freedom (dfBdf_B) and within-groups degrees of freedom (dfWdf_W).

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Updated 2026-05-26

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Research Methods in Psychology - 4th American Edition @ KPU

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