StatQuest: One or Two Tailed P-Values

StatQuest with Josh Starmer
24 Apr 201707:05

Summary

TLDRIn this Stat Quest, brought to you by the Genetics Department at UNC Chapel Hill, the focus is on one-tailed vs. two-tailed tests in statistics. Using a cancer treatment trial as an example, the video explains that a one-tailed test shows a p-value of 0.03, indicating significance, while a two-tailed test shows 0.06, not significant. The importance of choosing the test type before the experiment to avoid false positives is emphasized. The video concludes that a two-tailed test is generally preferable to get a complete picture of the data.

Takeaways

  • 📊 One-tailed tests focus on whether one treatment is better than another, while two-tailed tests evaluate if there is any difference, either better or worse.
  • 🔬 In clinical trials, it's crucial to decide on the type of test and p-value threshold before conducting the experiment to avoid bias.
  • 📉 A one-tailed test may produce a smaller p-value because it doesn't account for the possibility of the new treatment being worse.
  • ⚖️ Good statistical practice involves using a two-tailed test to get a complete picture of the treatment's effectiveness.
  • 🛑 Waiting to choose the type of test until after seeing the data can lead to p-hacking and false positives.
  • 🔍 A false positive occurs when a test indicates a significant result when there is none, which can be influenced by the type of test used.
  • 📈 Using a one-tailed test inappropriately can increase the probability of reporting false positives from 5% to 8%.
  • 💡 Always aim to understand both sides of the data story, not just the side that seems favorable.
  • 🔎 Some statistical tests do not offer a choice between one-tailed and two-tailed, but when given a choice, the two-tailed test is generally preferable.
  • 🎉 The end message is clear: for accurate and unbiased results, always use a two-tailed test when you have the option.

Q & A

  • What is the primary topic discussed in the transcript?

    -The primary topic discussed is the difference between one-tailed and two-tailed tests in statistical analysis and when to use each type.

  • Why might someone choose to use a one-tailed test?

    -A one-tailed test is used when the hypothesis specifically predicts that one treatment or condition will have a better outcome than another.

  • What p-value did the one-tailed test yield in the example given?

    -The one-tailed test yielded a p-value of 0.03.

  • What p-value did the two-tailed test yield in the example given?

    -The two-tailed test yielded a p-value of 0.06.

  • Why is the two-tailed p-value generally preferred over the one-tailed p-value?

    -The two-tailed p-value is preferred because it tests whether the new treatment is better, worse, or not significantly different from the standard treatment, providing a more comprehensive analysis.

  • What is the risk associated with deciding the type of test after seeing the data?

    -Deciding the type of test after seeing the data can lead to 'p-hacking,' increasing the probability of reporting false positives.

  • What is a false positive in the context of statistical testing?

    -A false positive occurs when the test indicates a significant effect when there is none, typically expected to happen 5% of the time in a two-tailed test.

  • How did the false positive rate change when switching to a one-tailed test after seeing favorable data?

    -The false positive rate increased from 5% to 8% when switching to a one-tailed test after seeing favorable data.

  • What lesson does the transcript emphasize regarding the choice of statistical tests?

    -The transcript emphasizes the importance of deciding which statistical test to use before conducting the experiment to avoid p-hacking and ensure accurate results.

  • What is the recommended practice when you have a choice between a one-tailed and a two-tailed test?

    -The recommended practice is to always choose a two-tailed test to fully understand both sides of the data and avoid biased results.

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Étiquettes Connexes
Statistical TestsData AnalysisP-valuesClinical TrialsOne-TailedTwo-TailedFalse PositivesSignificanceCancer TreatmentStat Quest
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