4.8 Take home points
Hypothesis:
- Statistical inference includes estimation and hypothesis testing.
- Hypothesis testing involves rejecting or not rejecting a hypothesis based on data.
Null Hypothesis Significance Testing:
- Involves null and alternative hypotheses, significance level, p-values, and test power.
- Importance of sample size and effect sizes.
Reporting Test Results:
- Emphasizes clarity and transparency.
- Report test statistics, p-values, effect sizes, and confidence intervals.
Statistical Test Selection:
- Choose tests based on data type, groups compared, and study design.
- Includes decision-making frameworks and examples.
Confidence Intervals:
- Provide a range of plausible values for population parameters.
- Can be used to infer hypotheses, with bootstrapped intervals as an alternative.
Bayesian Hypothesis Testing:
- Bayesian approach updates prior beliefs with data.
- Utilizes prior, likelihood, and posterior distributions for decision-making.
Critical Discussion:
- Examines limitations of null hypothesis significance testing.
- Discusses misinterpretation of p-values, overemphasis on significance, and publication bias.