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Explain how sample size and the strength of a relationship (such as Cohen's ) jointly influence the decision to reject or retain the null hypothesis in a study comparing two groups. Use the two hypothetical studies from the text—one with a large sample of women and men showing , and another with a small sample of women and men showing —to illustrate your explanation.
Question: Explain how sample size and the strength of a relationship (such as Cohen's ) jointly influence the decision to reject or retain the null hypothesis in a study comparing two groups. Use the two hypothetical studies from the text—one with a large sample of women and men showing , and another with a small sample of women and men showing —to illustrate your explanation.
Sample answer: The decision to reject or retain the null hypothesis depends on both the size of the sample and the strength of the observed relationship. In the first hypothetical study, a large sample of women and men combined with a strong relationship of Cohen's produces a result that is highly unlikely to occur by chance if the null hypothesis of no difference were true. Therefore, the null hypothesis is rejected. In contrast, the second study features a small sample of women and men and a weak relationship of Cohen's . A result this weak in such a small sample is highly likely to occur by chance alone, which requires the researcher to retain the null hypothesis.
Key points:
- A large sample paired with a strong relationship (e.g., with per group) makes the result highly unlikely to occur if the null hypothesis is true.
- Under these large-sample, strong-relationship conditions, the null hypothesis is rejected.
- A small sample paired with a weak relationship (e.g., with per group) is likely to occur by chance even if the null hypothesis is true.
- Under these small-sample, weak-relationship conditions, the null hypothesis is retained.
Rubric: The response must explain how sample size and relationship strength jointly influence null hypothesis decisions. It should correctly state that a large sample ( per group) and strong relationship () make the result highly unlikely to occur by chance, leading to rejecting the null hypothesis. It must also state that a small sample ( per group) and weak relationship () make the result likely to occur by chance, leading to retaining the null hypothesis.
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Research Methods in Psychology - 4th American Edition @ KPU
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