ajps-research-design

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Use when defending the research design of an American Journal of Political Science (AJPS) manuscript — causal identification for observational work, experimental and survey-experimental design, formal-empirical linkage, or case-based inference. AJPS reviewers are quantitatively demanding, so identification must license the claim being made. Strengthens the design; it does not write code.

brycewang-stanford By brycewang-stanford schedule Updated 6/12/2026

name: ajps-research-design description: Use when defending the research design of an American Journal of Political Science (AJPS) manuscript — causal identification for observational work, experimental and survey-experimental design, formal-empirical linkage, or case-based inference. AJPS reviewers are quantitatively demanding, so identification must license the claim being made. Strengthens the design; it does not write code.

Research Design (ajps-research-design)

AJPS publishes many methods but holds identification and inference to a high standard. The design must credibly connect the argument (ajps-theory-building) to evidence and rule out the strongest rival. This skill is mode-aware: pick the section that matches your work and defend it on its own terms.

When to trigger

  • Specifying identification, sampling, case selection, or experimental design
  • A reviewer questioned causal claims, a confound, external validity, or inference
  • Preparing a pre-analysis plan before collecting/analyzing data
  • Justifying why your design adjudicates the rival from ajps-literature-positioning

Quantitative / causal inference

  • Identification first. State the estimand and the assumptions that license a causal reading (ignorability, parallel trends, exclusion, continuity). Defend them; do not assert them.
  • Designs: experiments (incl. survey/conjoint), DID/event study (use modern staggered-adoption estimators, not naive TWFE), IV (first-stage strength, exclusion, weak-IV-robust inference), RDD (density/manipulation tests, bandwidth robustness), matching/weighting with balance + sensitivity.
  • Inference: cluster at the level of treatment assignment; randomization inference for experiments; small-cluster corrections (wild-cluster bootstrap) when clusters are few.
  • Sensitivity: how strong must an unobserved confounder be to overturn the result?

Experiments (lab / survey / field)

  • Preregister the design and primary analyses; report power / MDE; pre-specify subgroups.
  • Address attention/manipulation checks, attrition, balance, and ethics/IRB and consent (the AJPS submission portal asks for human-subjects documentation — see ajps-submission).
  • For survey experiments: sampling frame, treatment realism, and the limits on generalization.

Formal-empirical linkage

  • Make the empirical test follow from the model's comparative statics, not a loose analogy.
  • Distinguish predictions unique to your model from those shared with rivals, and test the unique ones.

Case-based / qualitative & multi-method

  • Case selection justified by design logic (typical, deviant, most/least-likely, paired) — say what the case is a case of.
  • Process tracing with explicit tests (hoop, smoking-gun, straw-in-the-wind); state what evidence would have disconfirmed the argument; plan source documentation (see ajps-replication-and-verification, qualitative path).

The adjudication test (AJPS-specific)

For the single strongest rival explanation, write: "If the rival were true rather than my argument, the data would look like ___; instead they look like ___." If you cannot, the design does not yet identify the contribution.

Design-credibility table (the bar AJPS referees apply by design)

Design What the referee demands Common desk-reject / reject trigger
RDD Density/manipulation test, bandwidth robustness, no sorting at cutoff Treating a non-discontinuous threshold as sharp
DID / event study Modern staggered-adoption estimator, pre-trend evidence Naive TWFE with heterogeneous timing
IV First-stage strength, defended exclusion, weak-IV-robust CIs "Plausibly exogenous" instrument with no defense of exclusion
Matching/weighting Balance + unobserved-confounder sensitivity bound Selection-on-observables read as clean causation

Worked micro-example (illustrative numbers)

A close-election RD on incumbency states the estimand (local effect of barely winning on next-cycle vote share at the threshold) and the continuity assumption that licenses it. The density test shows no sorting (illustrative p = 0.62); the estimate is stable across bandwidths h = 0.08-0.16; a donut-hole spec holds. The adjudication sentence: if incumbency advantage were candidate-quality persistence rather than an officeholding effect, the jump at the bare-win threshold would vanish — instead it is +6 points (illustrative). That sentence converts a quantitatively demanding AJPS referee.

Referee-pushback patterns and the venue-specific fix

  • "Identification leans on selection-on-observables." -> Add an Oster-style or sensitivity-bound analysis and report how strong an unobserved confounder must be to overturn the result.
  • "Theory and empirics are not tightly linked." -> Make the test follow from the model's comparative statics and target a prediction unique to your argument, not one shared with the rival.
  • "The DID uses naive TWFE under staggered adoption." -> Re-estimate with a heterogeneity-robust estimator and show the event-study leads are flat.

Calibration anchor: AJPS spans American, comparative, IR, theory, and methods, but applies a hard premium on credible identification across all of them; confirm any human-subjects/IRB specifics against the journal's current submission guidelines.

Execution bridge (StatsPAI / Stata MCP)

Estimate and audit the design, don't only describe it. Full map: execution-with-mcp. AJPS prizes credible identification across American / comparative / IR subfields; DiD/IV/RDD for observational claims, randomization inference for experiments.

  • detect_designrecommend → fit with as_handle=trueaudit_result.
  • Observational causal claims: staggered DiD (callaway_santanna / sun_abraham + bacon_decomposition + honest_did_from_result); IV (effective_f_test + anderson_rubin_ci); RDD (rdrobust + mccrary_test).
  • Experiments: randomization-based inference, romano_wolf for many-outcome family-wise control, and mediate for mediation (not naive controlling-away).
  • Sensitivity: oster_delta / sensemakr for observational claims.

Report the effect size in interpretable units; route the full battery to the appendix/supplement. A run end-to-end (synthetic data, real returns) is in the JF execution walkthrough.

Anti-patterns

  • Naive TWFE on staggered treatment; clustering at the wrong level
  • "Causal" language on a design that supports only association
  • Convenience case selection dressed up as theory-driven
  • Survey/conjoint experiments over-generalized to real-world behavior with no caveat
  • A design that cannot distinguish your argument from the leading alternative

Output format

【Mode】quant-causal / experiment / formal-empirical / case-based
【Estimand or claim】what is being identified/shown
【Key assumption(s)】and how each is defended
【Rival ruled out】the adjudication sentence
【Inference】clustering / RI / small-cluster correction
【Robustness/sensitivity】planned checks
【Next】ajps-data-analysis

Supplementary resources

Install via CLI
npx skills add https://github.com/brycewang-stanford/Awesome-Journal-Skills --skill ajps-research-design
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