review-data-analysis
关于
This skill reviews data analysis and ML pipelines for quality, correctness, and reproducibility. It assesses data quality, validates models, checks assumptions, detects leakage, and verifies reproducibility. Use it for pre-publication reviews, pre-production validation, or regulatory audits of analytical work.
快速安装
Claude Code
推荐npx skills add pjt222/agent-almanac -a claude-code/plugin add https://github.com/pjt222/agent-almanacgit clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/review-data-analysis在 Claude Code 中复制并粘贴此命令以安装该技能
技能文档
Review Data Analysis
Eval data analysis pipeline → correctness, robustness, reproducibility.
Use When
- Review colleague analysis notebook/script pre-publication
- Validate ML pipeline pre-prod deploy
- Audit analytical report for regulatory or business decision
- Assess analysis supports stated conclusions
- Second-analyst review in regulated env
In
- Required: Analysis code (scripts, notebooks, pipeline defs)
- Required: Analysis output (results, tables, figures, model metrics)
- Optional: Raw data or data dict
- Optional: Analysis plan/protocol (pre-registered or ad-hoc)
- Optional: Target audience + decision ctx
Do
Step 1: Data Quality
Review input data before eval analysis:
## Data Quality Assessment
### Completeness
- [ ] Missing data quantified (% by column and by row)
- [ ] Missing data mechanism considered (MCAR, MAR, MNAR)
- [ ] Imputation method appropriate (if used) or complete-case analysis justified
### Consistency
- [ ] Data types match expectations (dates are dates, numbers are numbers)
- [ ] Value ranges are plausible (no negative ages, future dates in historical data)
- [ ] Categorical variables have expected levels (no misspellings, consistent coding)
- [ ] Units are consistent across records
### Uniqueness
- [ ] Duplicate records identified and handled
- [ ] Primary keys are unique where expected
- [ ] Join operations produce expected row counts (no fan-out or drop)
### Timeliness
- [ ] Data vintage appropriate for the analysis question
- [ ] Temporal coverage matches the study period
- [ ] No look-ahead bias in time-series data
### Provenance
- [ ] Data source documented
- [ ] Extraction date/version recorded
- [ ] Any transformations between source and analysis input documented
→ Data quality issues documented w/ potential impact on results. If err: data not accessible for review → assess quality from code (what checks + transformations applied).
Step 2: Check Assumptions
For each statistical method/model used:
| Method | Key Assumptions | How to Check |
|---|---|---|
| Linear regression | Linearity, independence, normality of residuals, homoscedasticity | Residual plots, Q-Q plot, Durbin-Watson, Breusch-Pagan |
| Logistic regression | Independence, no multicollinearity, linear logit | VIF, Box-Tidwell, residual diagnostics |
| t-test | Independence, normality (or large n), equal variance | Shapiro-Wilk, Levene's test, visual inspection |
| ANOVA | Independence, normality, homogeneity of variance | Shapiro-Wilk per group, Levene's test |
| Chi-squared | Independence, expected frequency ≥ 5 | Expected frequency table |
| Random forest | Sufficient training data, feature relevance | OOB error, feature importance, learning curves |
| Neural network | Sufficient data, appropriate architecture, no data leakage | Validation curves, overfitting checks |
## Assumption Check Results
| Analysis Step | Method | Assumption | Checked? | Result |
|---------------|--------|------------|----------|--------|
| Primary model | Linear regression | Normality of residuals | Yes | Q-Q plot shows mild deviation — acceptable for n>100 |
| Primary model | Linear regression | Homoscedasticity | No | Not checked — recommend adding Breusch-Pagan test |
→ Every method has assumptions explicitly checked or ack'd. If err: assumptions violated → check if authors addressed (robust methods, transformations, sensitivity analysis).
Step 3: Detect Leakage
Leakage occurs when info from outside training set influences model → over-optimistic perf:
Common patterns:
- Target leakage: Feature directly encoding target (e.g. "treatment_outcome" predicting "treatment_success")
- Temporal leakage: Future info predicting past (features computed from data unavailable at prediction time)
- Train-test contamination: Preprocessing (scaling, imputation, feature select) fitted on full dataset before split
- Group leakage: Related obs (same patient, same device) split across train/test
- Feature engineering leakage: Aggregates computed across entire dataset not within training fold
## Leakage Assessment
| Check | Status | Evidence |
|-------|--------|----------|
| Target leakage | Clear | No features derived from target |
| Temporal leakage | CONCERN | Feature X uses 30-day forward average |
| Train-test contamination | Clear | StandardScaler fit on train only |
| Group leakage | CONCERN | Patient IDs not used for stratified split |
→ All common leakage patterns checked w/ clear/concern status. If err: leakage found → est impact by re-running w/o leaked feature (if possible) or flag for analyst.
Step 4: Validate Perf
Predictive models:
- Appropriate metrics for problem (not just accuracy — consider precision, recall, F1, AUC, RMSE, MAE)
- Cross-validation or holdout strategy described + appropriate
- Perf on training vs test/validation compared (overfitting check)
- Baseline comparison (naive model, random chance, prev approach)
- Confidence intervals or std errors on metrics
- Perf eval'd on relevant subgroups (fairness, edge cases)
Inferential/explanatory models:
- Model fit stats reported (R², AIC, BIC, deviance)
- Coefficients interpreted correctly (direction, magnitude, significance)
- Multicollinearity assessed (VIF < 5–10)
- Influential obs ID'd (Cook's distance, leverage)
- Model comparison if multi specifications tested
→ Validation appropriate for use case (prediction vs inference). If err: test perf suspiciously close to training → flag potential leakage.
Step 5: Reproducibility
## Reproducibility Checklist
| Item | Status | Notes |
|------|--------|-------|
| Code runs without errors | [Yes/No] | Tested on [environment description] |
| Random seeds set | [Yes/No] | Line [N] in [file] |
| Dependencies documented | [Yes/No] | requirements.txt / renv.lock present |
| Data loading reproducible | [Yes/No] | Path is [relative/absolute/URL] |
| Results match reported values | [Yes/No] | Verified: Table 1 ✓, Figure 2 ✗ (minor discrepancy) |
| Environment documented | [Yes/No] | Python 3.11 / R 4.5.0 specified |
→ Reproducibility verified by re-running (or assess from code if data unavailable). If err: results don't reproduce exactly → determine if diff w/in floating-point tolerance or indicates problem.
Step 6: Write Review
## Data Analysis Review
### Overall Assessment
[1-2 sentences: Is the analysis sound? Does it support the conclusions?]
### Data Quality
[Summary of data quality findings, impact on results]
### Methodological Concerns
1. **[Title]**: [Description, location in code/report, suggestion]
2. ...
### Strengths
1. [What was done well]
2. ...
### Reproducibility
[Tier assessment: Gold/Silver/Bronze/Opaque with justification]
### Recommendations
- [ ] [Specific action items for the analyst]
→ Review provides actionable feedback w/ specific refs to code locations. If err: time-constrained → prioritize data quality + leakage checks over style.
Check
- Data quality assessed across completeness, consistency, uniqueness, timeliness, provenance
- Statistical assumptions checked for each method
- Leakage systematically assessed
- Model perf validated w/ appropriate metrics + baselines
- Reproducibility eval'd (code runs, results match)
- Feedback specific, refs code lines or report sections
- Tone constructive + collaborative
Traps
- Review only code: Plan + conclusions matter as much as impl.
- Ignore data quality: Sophisticated models on bad data → confident wrong answers.
- Assume correctness from complexity: Random forest w/ 95% accuracy may have leakage; simple t-test may be correct.
- Not run code: If possible, execute to verify reproducibility. Reading code not sufficient.
- Miss forest for trees: Don't get lost in code style while missing fundamental analytical err.
→
review-research— broader research methodology + manuscript reviewvalidate-statistical-output— double-programming verification methodologygenerate-statistical-tables— publication-ready statistical tablesreview-software-architecture— code structure + design review
GitHub 仓库
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