These are the tests with the highest statistical power, used when your data meets the assumptions of normal distribution and homogeneity of variance.
- Independent Samples t-Test: Analyzes the mean differences between two independent groups (e.g., Experimental and Control groups). The magnitude of the difference is standardized using Cohen’s d coefficient.
- Paired Samples t-Test: Measures the effectiveness of an intervention by comparing measurements of the same group at different times (e.g., Pre-test and Post-test).
- One-Way ANOVA: Examines differences among three or more groups holistically (Omnibus test). When a significant inter-group difference is detected, Post-Hoc corrections (Tukey, Scheffe, Bonferroni) are applied to determine which groups originate the difference. The explanatory power of the analysis is reported with Eta-Squared (η²).