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Heterogeneous heterogeneity by default: Testing categorical moderators in mixed-effects meta-analysis.

Josue E Rodriguez1, Donald R Williams1,2, Paul-Christian Bürkner3

  • 1University of California, Davis, Davis, California, USA.

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Summary
This summary is machine-generated.

When analyzing categorical moderators in meta-analysis, researchers should default to assuming unequal between-study variances. A mixed-effects location-scale model (MELSM) offers better statistical control compared to equal variance models, especially with imbalanced data.

Keywords:
heterogeneitylocation-scale modellingmeta-analysismixed effectsmoderatorrandom effects

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Area of Science:

  • Meta-analysis and statistical modeling
  • Psychometrics and quantitative psychology

Background:

  • Categorical moderators are frequently used in mixed-effects meta-analysis to explain heterogeneity in effect sizes.
  • A common assumption is constant between-study variance across moderator levels, which can have significant statistical consequences.

Approach:

  • Propose defaulting to unequal between-study variances for categorical moderator analysis.
  • Introduce the mixed-effects location-scale model (MELSM) to estimate group-specific between-study variances.
  • Conduct two extensive simulation studies to compare MELSM with equal variance mixed-effects models (MEM).

Key Points:

  • MELSM shows minimal loss in Type I error and statistical power compared to MEM when variances are equal or sample sizes are balanced.
  • With imbalanced sample sizes and unequal variances, MEM can lead to inflated or conservative Type I error rates, while MELSM maintains better control.
  • MELSM generally offers similar or higher statistical power than MEM when MEM's Type I error rates are not inflated.

Conclusions:

  • Assuming unequal between-study variances is a preferred default strategy for testing categorical moderators.
  • MELSM provides a robust approach for handling between-study variance heterogeneity in moderator analyses.
  • Researchers should consider adopting MELSM to improve the accuracy and reliability of moderator effect tests in meta-analysis.