From aistats-skills
Helps determine whether a research project fits AISTATS vs. other ML/stats venues, identifies the statistical primitive, and sharpens the AI-statistics framing.
How this skill is triggered — by the user, by Claude, or both
Slash command
/aistats-skills:aistats-topic-selectionThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Use this before writing. AISTATS is strongest for work at the intersection of artificial
Use this before writing. AISTATS is strongest for work at the intersection of artificial intelligence, machine learning, and statistics, especially when statistical reasoning is not merely an evaluation detail.
| Signal in the project | AISTATS reading |
|---|---|
| Consistency, minimax rate, regret, or coverage result paired with experiments | Core fit — the house genre |
| Bayesian, causal, kernel, or high-dimensional methodology with guarantees | Core fit |
| Deep architecture with strong benchmarks but thin theory | Better served at NeurIPS, ICML, or ICLR |
| Pure theory with no plausible experiment | COLT or a statistics journal |
| Probabilistic reasoning without a learning angle | UAI or a statistics venue |
A project delivers a debiased lasso variant with valid confidence intervals in high dimensions and simulations confirming coverage. AISTATS reading: strong fit — an inference guarantee plus validating experiments is exactly what this venue rewards. Strip the inference theory and keep only prediction benchmarks, and the same project belongs at a general ML venue; grow it into journal-length asymptotic refinements, and Annals of Statistics or JMLR becomes the better home.
[Fit] strong AISTATS / possible AISTATS / better elsewhere
[Best venue] AISTATS / NeurIPS / ICML / ICLR / UAI / COLT / journal / other
[Contribution sentence] <one sentence>
[Top rejection risk] <novelty/statistics/evidence/clarity/scope>
[Next action] <theory, experiment, framing, or venue switch>
npx claudepluginhub brycewang-stanford/awesome-journal-skills --plugin aistats-skillsEvaluates manuscript fit for the International Conference on Artificial Intelligence and Statistics (AISTATS), providing venue-specific framing, evidence bar, and submission-cycle checks.
Audits AISTATS submissions against dual-community literature (ML conferences and statistics journals) for novelty, eligibility, and citation coverage.
Evaluates project fit for ICLR vs other ML venues (NeurIPS, ICML, CVPR, ACL, KDD). Helps reframe application papers with representation-learning insights or route to better-matched conferences.