isr-data-analysis
GitHub用于ISR论文实证识别、分析证明及设计科学评估。涵盖因果推断、模型推导与效用验证,强调严谨性与证据链,不负责研究设计或贡献框架构建。
Trigger Scenarios
Install
npx skills add brycewang-stanford/Awesome-Journal-Skills --skill isr-data-analysis -g -y
SKILL.md
Frontmatter
{
"name": "isr-data-analysis",
"description": "Use when executing and reporting the analysis for an Information Systems Research (ISR) manuscript — identification and validity for empirical work, proof discipline and comparative statics for analytical work, and rigorous evaluation for design-science work, with overflow routed to the electronic companion. Runs and reports the analysis; it does not design the study (isr-methods) or frame the contribution (isr-contribution-framing)."
}
Analysis, Identification & Proof (isr-data-analysis)
When to trigger
- Data are collected, or the model is built, and it is time to estimate, derive, or evaluate
- You are unsure whether your estimator matches the design, or whether a proof is complete
- Reviewers will probe identification, measurement validity, or assumption sensitivity
- A reviewer says "the analysis does not support the inference"
Empirical genre — identification and validity first
ISR empirical reviewers expect causal claims to rest on a credible identification strategy, not on a fitted regression:
| Design / claim | Estimator / strategy |
|---|---|
| Manipulated IT design/policy | Experiment: randomization checks, manipulation/attention checks |
| Quasi-experiment, staggered adoption | DiD (modern estimators), event study, parallel-trends evidence |
| Endogenous IT investment/adoption (archival) | IV/2SLS, RDD, matching, panel FE with cluster-robust SE |
| Latent behavioral constructs | SEM/CFA (fit: CFI/TLI/RMSEA/SRMR), AVE, discriminant validity; PLS-SEM where appropriate |
| Nested data (users in teams/firms/platforms) | Multilevel / HLM; cluster SEs to the sampling/nesting |
| Counts, choices, durations (clicks, churn) | Poisson/NB, logit/probit, hazard models as the DV demands |
Address common-method bias by design first (separate sources/waves), then statistically (marker variable or unmeasured latent method factor — a Harman single-factor test alone is weak). Report effect sizes and practical magnitude, not only p-values.
Analytical genre — proof discipline
For modeling papers, "analysis" means correct, complete derivations: state the equilibrium concept, prove existence/uniqueness where claimed, and present the comparative statics as the substantive results with their IS interpretation. Run robustness as extensions that relax key assumptions (alternative information structures, costs, timing) and show which results survive. Full proofs and lemmas belong in the electronic companion, with the main text carrying the intuition and the load-bearing steps.
Design-science genre — rigorous evaluation
Demonstrate the artifact's utility: benchmarks against credible baselines, controlled user studies, or field deployment, with metrics tied to the stated design objectives. A demo is not an evaluation.
Claim-to-evidence ledger
Before writing results, create a ledger that binds every contribution claim to an analysis:
| Claim type | Minimum evidence | Reviewer stress test |
|---|---|---|
| Causal empirical claim | Design logic, identifying assumptions, pre-trends/placebos or randomization checks, effect magnitude | What unobserved selection or timing story would overturn the claim? |
| Construct/measurement claim | Item provenance, reliability, CFA/discriminant validity, CMB defense | Would a different construct name or common-method explanation fit the data as well? |
| Analytical claim | Proposition, proof sketch in main text, full derivation in companion, comparative statics | Which assumption drives the result, and does an extension relax it? |
| Design-science claim | Baseline comparison, objective-linked metrics, user/field evidence where relevant | Is the artifact useful beyond the demonstration case? |
If a claim lacks a row, downgrade the language before submission. ISR reviewers are receptive to careful boundaries; they are much less receptive to causal, theoretical, or design-utility claims that outrun the evidence.
Reproducibility and the electronic companion
ISR's source-backed compliance rule is data provenance certification: authors certify rights to use data and publish results, and any legal or corporate permissions must be obtained before submission. Regardless, keep clean scripts/solver inputs that regenerate every exhibit, and use the electronic companion for proofs, full measurement items, and supplementary analyses given the 32-page text / 38-page total caps.
Execution bridge (StatsPAI / Stata MCP)
Run the battery, don't just enumerate it. Full map:
execution-with-mcp. ISR is empirical IS with strong econometric and experimental work; identification (DiD / IV) for observational claims, randomization inference for experiments.
- 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 appendix. See the executed chain in the JF execution walkthrough.
Checklist
- Empirical: identification strategy executed; assumptions/threats discussed
- Measurement validity (reliability, CFA fit, AVE/discriminant) reported where latent constructs used
- CMB addressed beyond a single-factor test; effect sizes reported
- Analytical: equilibrium/existence stated; comparative statics interpreted; extensions show robustness
- DSR: evaluation demonstrates utility against baselines/objectives
- Claim-to-evidence ledger completed; no claim outruns the analysis
- Proofs/measurement detail routed to the electronic companion
Anti-patterns
- Regression-as-causal with no identification.
- Single-factor CMB test as the sole defense.
- Algebra dump with no economic/IS interpretation of the comparative statics.
- Demo-not-evaluation for a design-science artifact.
- Results-first writing that lists tables without saying which inference each table licenses.
Output format
【Genre】empirical / analytical / design-science
【Identification or proof】[...]
【Validity / robustness】CFA fit, AVE, CMB / extensions / baselines
【Effect size or comparative statics】[...]
【Electronic companion】proofs/items/supplements routed
【Open issues for reviewers】[...]
【Next step】isr-contribution-framing
Version History
- 1839142 Current 2026-07-05 13:22


