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Cohen's d

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Intro to Statistics

Definition

Cohen's d is a standardized measure of the effect size between two population means. It quantifies the difference between two means in terms of standard deviations, providing a way to assess the practical significance of a difference, rather than just its statistical significance.

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5 Must Know Facts For Your Next Test

  1. Cohen's d is calculated by dividing the difference between the two sample means by the pooled standard deviation of the two samples.
  2. The magnitude of Cohen's d can be interpreted as a small (0.2), medium (0.5), or large (0.8) effect size, indicating the practical significance of the difference between the two means.
  3. Cohen's d is particularly useful when comparing the effectiveness of two different treatments or interventions, as it provides a standardized measure of the magnitude of the difference.
  4. Cohen's d is sensitive to the variability within each group, so it can be influenced by factors that affect the standard deviation, such as sample size and measurement error.
  5. Cohen's d is a key concept in the context of 10.1 Two Population Means with Unknown Standard Deviations, as it allows researchers to quantify the difference between two population means when the standard deviations are unknown.

Review Questions

  • Explain how Cohen's d is calculated and what it represents.
    • Cohen's d is calculated by taking the difference between the two sample means and dividing it by the pooled standard deviation of the two samples. This provides a standardized measure of the effect size, which represents the magnitude of the difference between the two means in terms of standard deviations. A Cohen's d value of 0.5, for example, would indicate that the difference between the two means is half a standard deviation.
  • Discuss the importance of Cohen's d in the context of comparing the effectiveness of two treatments or interventions.
    • When comparing the effectiveness of two different treatments or interventions, Cohen's d is a valuable tool because it provides a standardized measure of the magnitude of the difference between the two means. This allows researchers to assess the practical significance of the difference, rather than just its statistical significance. By quantifying the effect size, Cohen's d helps researchers determine the real-world impact of an intervention and make informed decisions about the relative effectiveness of different treatments.
  • Analyze how factors such as sample size and measurement error can influence the value of Cohen's d.
    • Cohen's d is sensitive to the variability within each group, so factors that affect the standard deviation can influence the value of Cohen's d. For example, a smaller sample size can lead to a larger standard deviation and a smaller Cohen's d, even if the actual difference between the means is the same. Similarly, measurement error can increase the standard deviation and reduce the value of Cohen's d, potentially masking the true effect size. Researchers must be mindful of these factors when interpreting and comparing Cohen's d values, as they can impact the practical significance of the findings.

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