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list-experiment
Design and diagnose list experiments (item count technique).
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
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Design and diagnose list experiments (item count technique).
Codex 또는 Claude로 설치 이 Prompt를 복사해 Codex, Claude 또는 다른 어시스턴트에 붙여 넣으면 Skill 페이지를 검토하고 설치를 진행할 수 있습니다.
SOC 직업 분류 기준
Scaffold or audit an entire research project repository organized around its source library. Use whenever the user is starting, structuring, organizing, or reviewing a whole project — "set up a research repo", "how should I structure/organize this project", "initialize my sources folder", "new paper or literature-review project", "audit my repo structure", "is my sources folder set up right", "check my project layout". Builds the full tree from the sources spine outward — sources/{og,md,unprocessed}, references.bib, a PDF→Markdown convert script (OpenDataLoader PDF), a process-source intake command, CLAUDE.md/AGENTS.md, .gitignore, .venv — plus the analysis, manuscript, and review folders; or audits an existing repo and reports what is present, partial, or missing. NOT for intaking or converting a single PDF (use process-source) or building a publication replication package (use replication-package).
LLM token logprobs and calibration: per-decision confidence, ECE, Brier, reliability diagrams, low-confidence triage.
LLM council/panel voting: multi-model coders, consensus rules, inter-rater agreement (kappa, alpha), correlated-error diagnostics.
Compare OCR systems before a bulk run: candidate set, stratified ground truth, CER/WER, normalization, per-language and per-stratum accuracy.
Fact-check a manuscript's claims against the cited sources themselves: locate each source's knowledge-base Markdown file and verify the in-text claim is actually supported. Runs a pre-flight gate that refuses unless a per-source Markdown knowledge base exists and is clean (PDFs converted via process-source); then runs citation-check; then audits claim support, overclaiming, direction, scope, and misattribution.
Audit citation existence and fabrication risk, in-text/reference parity, DOIs, claim support, and style.
| name | list-experiment |
| description | Design and diagnose list experiments (item count technique). |
| argument-hint | [describe your sensitive question or list experiment design] |
Related skills: Use alongside hypothesis-building (state π and a SESOI before design choices), survey-design (mode effects, question ordering, and pre-testing of control items), and methods-reporting (deposit list wording, randomization seed, list package version, and ict.test / ict.hausman.test / ictreg() output).
list R package.list R package (Blair, Chou & Imai), which provides a unified interface for difference-in-means, NLSreg, MLreg, combined estimator, and Bayesian MCMC hierarchical models, along with all standard diagnostic tests.ict.test() in Blair & Imai's (2012) list package.ictreg().ict.hausman.test() in the list package — reject model specification if the Hausman statistic is large and positive, or if it takes a negative value (which itself signals misspecification). If detected, use NLSreg as the primary estimator and consider including a placebo item.list package's simulation tools support this. Rule of thumb: assume effective sample sizes 5–10× below what a direct question study would require.ict.test() and reported?ict.hausman.test(); Blair, Chou & Imai 2019) reported when a multivariate estimator is used?list package cited: Is the list R package (Blair, Chou & Imai) cited as the implementation source?For a worked illustration — a four-item control list for a clientelism / vote-buying sensitive item, with expected prevalences, floor/ceiling tail calculations, a pre-field NFC simulation, and the specific ict.test() / ict.hausman.test() diagnostic calls — see reference/example-clientelism.md.