jmf-data-analysis
GitHub专为《婚姻与家庭杂志》稿件设计的分析技能,指导复杂调查、纵向及配对数据的处理。涵盖不确定性报告、选择偏差校正、缺失值管理及稳健性检验,确保结果符合双盲同行评审的方法学规范并保证可重复性。
Trigger Scenarios
Install
npx skills add brycewang-stanford/Awesome-Journal-Skills --skill jmf-data-analysis -g -y
SKILL.md
Frontmatter
{
"name": "jmf-data-analysis",
"description": "Use when executing and reporting the analysis for a Journal of Marriage and Family (JMF) manuscript so it survives expert double-blind review — honest uncertainty, robustness, attention to selection and non-independence, and correct handling of complex-survey, longitudinal, and dyadic data. Guides analysis norms; it does not fabricate results."
}
Data Analysis (jmf-data-analysis)
JMF reviewers are methodologically sophisticated and family data are tricky: complex-survey weights,
panel attrition, missingness, and the non-independence of partners and family members all bite. This
skill covers execution and reporting norms; design decisions live in jmf-research-design.
When to trigger
- Running main and supporting analyses; building the results section
- A reviewer asked for robustness, heterogeneity, selection checks, or alternative specifications
- Reconciling preregistered vs. exploratory analyses
- Making the analysis reproducible before deposit
Analysis norms JMF expects
- Report uncertainty and magnitude honestly. Confidence intervals and effect sizes (not stars alone); state the substantive size in family terms (months to divorce, percentage-point change in a transition, points on a relationship-quality scale).
- Address selection explicitly. In observational family research, show what survives within-person/ couple fixed effects, sibling comparisons, propensity adjustment + sensitivity, or honest scoping.
- Respect the data structure. Apply complex-survey weights/clusters/strata for PSID, NSFG, Add Health, etc.; cluster or model non-independence for dyads and families; use survival models for time-to-event outcomes.
- Handle missingness principled-ly. Multiple imputation or FIML rather than listwise deletion; report the missing-data mechanism assumption and the share imputed; probe panel attrition.
- Robustness that probes, not decorates. Alternative measures, samples, estimators, and specifications that could break the result — and what you learn.
- Heterogeneity with discipline. Pre-specify subgroups (by gender, family structure, race/ ethnicity, cohort) where possible; correct for multiple comparisons; do not mine interactions.
Family-data specifics
- Report the analytic sample and how it was derived from the full dataset (eligibility, attrition, missingness) — reviewers will check the funnel.
- For dyadic models, report actor and partner effects and whether dyads are distinguishable.
- For growth/event-history models, report the time metric, censoring, and competing risks.
Reproducibility while you work (not at the end)
- One master script regenerates every table and figure from the (raw or constructed) data.
- Set and report seeds for imputation, bootstrap, simulation, and any stochastic step.
- Pin software/package versions (
renv.lock,requirements.txt, recordedssc/netinstalls). - Keep table/figure numbers in the manuscript matched to script outputs.
What JMF referees check in a results section
| Check | Passes review | Triggers a revision request |
|---|---|---|
| Survey design | PSID/NSFG/Add Health weights, strata, clusters applied | Unweighted estimates from a complex sample |
| Non-independence | Dyads/families clustered or modeled (APIM, multilevel) | Partners treated as independent rows |
| Selection | Within-couple FE, sibling, PSM+sensitivity, or honest scoping | "Effect of" language on raw associations |
| Magnitude | Effect in family units (months to divorce) + CI | Stars only, no substantive size |
For the flagship journal of the National Council on Family Relations, the fastest desk-reject-adjacent outcome is an analysis that ignores the survey design or the dependence built into couple and family data.
Worked micro-example (illustrative)
A divorce-timing study uses discrete-time event-history on national-panel marriages. Numbers illustrative.
- Naive (flagged): a logit pooling person-years with no clustering reports OR = 1.40 for job loss on divorce, stars only.
- JMF-grade: a discrete-time hazard with survey weights and SEs clustered on the couple; job loss raises the divorce hazard ~28% (HR 1.28, 95% CI 1.09–1.50), shifting modeled median time to divorce earlier by ~1.6 years. Selection probe: within-couple fixed effects leave a smaller HR ≈ 1.18, so it is not purely sorting. Competing risks are modeled and the sample funnel reported.
Referee-pushback patterns and the venue-specific fix
- "Dyadic dependence ignored." Re-estimate with members nested in couples; for distinguishable dyads report actor and partner effects separately and test equality.
- "Selection into family transitions." Add a within-unit (couple/sibling) comparison or a sensitivity bound, and soften causal language to match.
- "Survey design ignored." Apply the dataset's weight/strata/PSU variables and report design-based SEs.
Calibration (hedged): for family panels (PSID, Fragile Families, Add Health, NSFG), design-based inference and principled missing-data handling are defaults; confirm dataset-specific guidance with provider documentation.
Execution bridge (StatsPAI / Stata MCP)
Run the battery, don't just enumerate it. Full map:
execution-with-mcp. JMF is quantitative family demography/sociology; emphasize identification, selection, and decomposition methods.
- Many outcomes / specifications:
romano_wolf(step-down FWER) orbenjamini_hochberg— report the adjusted threshold. - OVB sensitivity:
oster_delta/sensemakr. - Inference:
wild_cluster_bootstrap(few clusters),twoway_cluster/conley; multilevel data → cluster at the right level. - Re-fit off one handle:
audit_result(result_id)lists the missing checks and the exactsuggest_functionfor each. - Exhibits:
etable/did_summary_to_latexfrom the handle — no retyped numbers.
Keep the decisive checks in the body and the exhaustive battery in the supplement. See the executed chain in the JF execution walkthrough.
Anti-patterns
- Stars-only tables with no effect sizes, intervals, or substantive interpretation
- Ignoring survey weights/design or treating dyad members as independent
- Listwise deletion that silently changes the sample; ignoring attrition
- p-hacking / fishing for a significant interaction; HARKing exploratory results into hypotheses
- A results section whose numbers the code cannot reproduce
Output format
【Main estimate】magnitude + interval + substantive (family) meaning
【Selection check】(per research-design) result
【Data structure】weights/clusters/dyad-family non-independence handled? [Y/N]
【Missing data】MI/FIML + attrition probed? [Y/N]
【Robustness】specs that could break it → what held
【Reproducible】master script + seeds + pinned versions? [Y/N]
【Next】jmf-tables-figures
Supplementary resources
../../resources/external_tools.md— estimation, survey, dyadic, survival, and imputation packages../../resources/official-source-map.md— replication-detail and data expectations
Version History
- 1839142 Current 2026-07-05 13:50


