From open-science-skills
Transforms theoretical concepts into falsifiable, counterfactual hypotheses with formal estimands, SESOI, and three-level specs for pre-analysis plans and causal experiments.
How this skill is triggered — by the user, by Claude, or both
Slash command
/open-science-skills:hypothesis-buildingThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
- **Verify FPCI Resolution:** Confirm that random assignment (or the identification strategy) solves the Fundamental Problem of Causal Inference for this design (Druckman 2022).
TOSTER package implements this procedure (Lakens 2025).npx claudepluginhub scdenney/open-science-skills --plugin ossFormulates falsifiable hypotheses from observations, operationalizes variables, designs experiments with controls, and defines falsification criteria.
Guides users through randomized experiments (RCTs/A/B tests) with power analysis, balance checks, and robust standard errors in R or Python.
Turns observations into testable hypotheses with predictions, mechanisms, and experiments. Follows scientific method; use for ideation or LLM testing on datasets.