Files
BZJZ_Material/文档润色流和知识库构建流/claude-scholar/skills/results-analysis/references/common-pitfalls.md
2026-06-11 03:33:14 +08:00

998 B

Common Pitfalls in Experimental Analysis

Statistical pitfalls

  • Reporting only the best run
  • Mixing seed-level and subject-level units
  • Running many contrasts without correction
  • Reporting significance without effect size
  • Using parametric tests after failed assumptions without explanation

Visualization pitfalls

  • No real figure despite readable data
  • Plot without uncertainty information
  • Overcrowded multi-panel figure with no message hierarchy
  • Caption missing n / error-bar meaning
  • Figure not referenced or interpreted in text

Reasoning pitfalls

  • Confusing correlation with mechanism
  • Treating trend as conclusion
  • Ignoring negative results
  • Hiding instability behind a mean value
  • Turning raw logs into durable conclusions too early

Reporting pitfalls

  • Writing paper prose before evidence is stabilized
  • Mixing analysis artifact with final narrative artifact
  • Not separating blocker from conclusion
  • Forgetting to state what decision the analysis changes