Agent skill

meta-analysis

Statistical methods for combining results across multiple studies. Use when aggregating cross-study or cross-experiment results.

Stars 11,027
Forks 1,262

Install this agent skill to your Project

npx add-skill https://github.com/aiming-lab/AutoResearchClaw/tree/main/researchclaw/skills/builtin/experiment/meta-analysis

Metadata

Additional technical details for this skill

author
researchclaw
version
1.0
category
experiment
priority
5
references
Borenstein et al., Introduction to Meta-Analysis, 2009
trigger keywords
meta-analysis,effect size,pooled,cross-study,aggregat
applicable stages
7,14

SKILL.md

Meta-Analysis Best Practice

When comparing results across studies or experiments:

  1. Report effect sizes, not just p-values
  2. Use standardized metrics for cross-study comparison
  3. Account for heterogeneity (different setups, datasets, seeds)
  4. Report confidence intervals alongside point estimates
  5. Use forest plots to visualize cross-study comparisons
  6. Identify and discuss outliers or inconsistent results
  7. Consider publication bias when interpreting aggregate results

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