scoresvideos
Statistical Inference
Table of Contents

One-way ANOVA compares means across multiple groups, extending the t-test concept. It determines if there are statistically significant differences between group means, reducing the Type I error rate compared to multiple pairwise t-tests.

The process involves calculating sum of squares, degrees of freedom, and mean squares to compute the F-statistic. Post-hoc tests like Tukey's HSD help identify specific group differences. Assumptions, such as homogeneity of variances, are crucial for accurate results.

One-Way ANOVA Fundamentals

Purpose of one-way ANOVA

  • Compares means across three or more independent groups (student performance in different teaching methods)
  • Determines statistically significant differences between group means
  • Tests null hypothesis that all group means are equal
  • Extends t-test concept to multiple groups simultaneously
  • Reduces Type I error rate compared to multiple pairwise t-tests

Conducting one-way ANOVA

  1. Formulate null and alternative hypotheses
  2. Calculate sum of squares (SS): Total SS, between-group SS, within-group SS
  3. Determine degrees of freedom (df)
  4. Compute mean squares (MS)
  5. Calculate F-statistic
  6. Determine p-value
  7. Compare F-statistic to critical F-value or p-value to significance level
  8. Make decision to reject or fail to reject null hypothesis
  • F-statistic represents ratio of between-group variance to within-group variance
  • p-value indicates probability of obtaining observed F-statistic under null hypothesis
  • Reject null hypothesis if p-value < significance level (α) (typically 0.05)

Post-hoc tests for group comparisons

  • Identifies specific group differences when ANOVA indicates significant differences
  • Tukey's Honestly Significant Difference (HSD) test controls family-wise error rate
  • Bonferroni correction adjusts significance level for multiple comparisons
  • Scheffe's test provides conservative test for all possible contrasts
  • Interpretation involves identifying pairs of groups with significant differences
  • Consider effect sizes and confidence intervals for practical significance

Homogeneity of variances assumption

  • Levene's test assesses equality of variances across groups
  • Bartlett's test offers more power but sensitive to non-normality
  • Welch's ANOVA adjusts degrees of freedom for unequal variances
  • Brown-Forsythe test uses median instead of mean, less sensitive to outliers
  • Compare results of standard ANOVA and corrected versions
  • Consider practical significance of differences in results when assumptions violated