From english-natsci-journal-skills
Guides assessment of manuscript fit for JMLR by encoding its editorial culture, scope, method/evidence bar, and desk-reject heuristics. Useful when targeting this archival ML journal.
How this skill is triggered — by the user, by Claude, or both
Slash command
/english-natsci-journal-skills:journal-of-machine-learning-researchThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Journal of Machine Learning Research (JMLR) is the primary open-access, society-run archival journal for machine learning research, publishing since 2000 under a non-profit model with no article-processing charges. It is editorially independent, author-friendly in format, and strongly archival in culture: the expectation is rigorous methods and theory, open code, and lasting scientific contribu...
Journal of Machine Learning Research (JMLR) is the primary open-access, society-run archival journal for machine learning research, publishing since 2000 under a non-profit model with no article-processing charges. It is editorially independent, author-friendly in format, and strongly archival in culture: the expectation is rigorous methods and theory, open code, and lasting scientific contribution — not fast-paced competitive benchmarking. JMLR is read by the global ML research community as a reference for foundational methods, algorithms, and theory. It is not a conference proceedings replacement and does not reward framing calibrated to leaderboard position.
This skill is a fit / venue-selection / re-framing tool. It does not replace the journal's current official submission guidelines. Before submitting, re-check the live author instructions on the JMLR site (jmlr.org) and the editorial submission system.
../../resources/source-basis.md and ../../resources/official-source-map.md; start from the official source anchors for this journal family, then cite the current journal-specific page you checked.Papers with computer vision emphasis and archival evaluation → ieee-transactions-on-pattern-analysis-and-machine-intelligence. Papers with broader AI significance or real-world application framing for a mixed audience → nature-machine-intelligence. Papers with robotics integration and system-level demonstration → science-robotics. Fast-paced new results where archival depth is not yet possible → ML conference venues.
[Fit] High / Medium / Low (one-line reason)
[Target] Journal of Machine Learning Research
[Topic tags] <2–3 closest topics>
[Method/evidence] <does the technical rigor, proof completeness, and reproducibility clear the JMLR bar?>
[Top risk] <the single most likely reason for rejection>
[Official items to re-check] <track selection / code availability / proof completeness / prior-version policy / disclosures>
[Re-route suggestion] <if not a fit, a better-matched venue>
npx claudepluginhub brycewang-stanford/awesome-journal-skills --plugin english-natsci-journal-skillsAssesses manuscript fit for Nature Machine Intelligence, covering scope, method bar, desk-reject risks, and framing for interdisciplinary audiences.
Guides authors on positioning algorithmic/optimization/ML-for-OR manuscripts for INFORMS Journal on Computing, including scope fit, method evidence bar, house style, and desk-reject heuristics.
Evaluates whether a signal-processing methods manuscript fits IEEE Transactions on Signal Processing, including venue fit, method-plus-analysis bar, baseline expectations, and desk-reject heuristics.