ieee-international-conference-on-data-mining

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Use when targeting IEEE International Conference on Data Mining (ICDM) or deciding whether a computer-science manuscript fits this venue. Encodes conference fit, framing, evidence bar, submission-cycle checks, rebuttal posture, and desk-reject risks for data mining.

brycewang-stanford By brycewang-stanford schedule Updated 6/10/2026

name: ieee-international-conference-on-data-mining description: Use when targeting IEEE International Conference on Data Mining (ICDM) or deciding whether a computer-science manuscript fits this venue. Encodes conference fit, framing, evidence bar, submission-cycle checks, rebuttal posture, and desk-reject risks for data mining.

IEEE International Conference on Data Mining (ICDM)

Conference positioning

IEEE International Conference on Data Mining (ICDM) is a top computer-science conference venue for data mining algorithms, pattern discovery, graph mining, anomaly detection, and applied analytics. It rewards a data-mining methods paper with careful baselines and defensible discovery claims. Treat this skill as a fit / venue-selection / re-framing tool for conference submission strategy, not as a substitute for the current year's CFP, author kit, ethics policy, or submission portal.

Because CS conferences change deadlines, templates, page limits, review workflow, artifact rules, AI-use policy, and rebuttal formats every cycle, always verify the live official instructions before making a submission-ready recommendation. Start from the official source anchor recorded for this venue in ../../resources/conference-roster.md and ../../resources/official-source-map.md.

When to trigger

  • The author names ICDM / IEEE International Conference on Data Mining as the target venue.
  • A manuscript in data mining algorithms needs a conference-fit read before being formatted or submitted.
  • The paper must be re-framed from journal style or arXiv style into a selective CS conference narrative.
  • The author needs an evidence-gap, anonymity, artifact, rebuttal, or re-routing diagnosis for this venue.

Scope & topic fit

  • Core fit: data mining algorithms, pattern discovery, graph mining, anomaly detection, and applied analytics.
  • Best submissions make a precise contribution type visible: algorithm, theorem, system, dataset, benchmark, empirical finding, design artifact, tool, or socio-technical analysis.
  • The paper should explain why the result matters to ICDM's reviewers, not just why it is interesting to the authors' lab or product context.
  • Position related work against the most recent conference-cycle papers in this venue and its closest siblings; stale comparisons are a common early-review weakness.
  • If the contribution is interdisciplinary, state which part is CS research and which part is domain evidence.

Venue-specific calibration

  • Reviewer lens: Read reviewers as data-centric ML and discovery specialists. Novelty should appear in mining method, scale, discovery validity, or applied impact.
  • Contribution hook to foreground: the venue-specific contribution bar.
  • Scope vocabulary to use naturally in the abstract and introduction: data mining algorithms, pattern discovery, graph mining, anomaly detection, and applied analytics.
  • Distinctive fingerprint for reviewer calibration: data, mining, algorithms, pattern, discovery, graph, anomaly, detection, applied, analytics, venue-specific, contribution.
  • Official anchor domain: www.computer.org. Quote annual rules only after opening that source and the current-year CFP/author kit.

Close-neighbor routing guardrail

  • Route to ICDM when the paper is a data-mining method, pattern-discovery result, or applied mining study suited to a broad IEEE data-mining audience.
  • Compare KDD for larger data-mining impact and applied discovery, SDM for mathematical/statistical rigor, CIKM for information/knowledge management, and SIGMOD/VLDB/ICDE for database systems.

What distinguishes this venue from its closest siblings

  • Sponsorship. IEEE-sponsored data-mining flagship; distinguish from SDM (SIAM-sponsored) and KDD (ACM).
  • Routing. Topic scope across ICDM/SDM/KDD overlaps heavily; route by community, cycle, and paper format rather than prestige.
  • Center of gravity. Algorithmic data-mining contributions with strong empirical evaluation; applied/industrial tracks fit KDD's applied-data-science lane.

ICDM-specific routing detail

  • Prefer ICDM when the paper is data-mining research with algorithmic, applied, or scalable mining contribution across structured, graph, temporal, text, or heterogeneous data.
  • Route mathematically focused data-mining methods to SDM, database-system contributions to ICDE/SIGMOD/VLDB, and broad ML method papers to ICML/NeurIPS/ICLR.
  • ICDM evidence should show mining task definition, baselines, scalability, dataset realism, ablations, and interpretability or application relevance.

Method & evidence bar

  • Compare against current strong baselines and explain exactly what changes in the algorithm, objective, data, or inference procedure.
  • Report ablations that isolate the claimed mechanism; do not rely on aggregate benchmark wins alone.
  • Document data, compute, hyperparameters, model selection, and failure cases so the result can be reviewed as science rather than demo output.
  • For ICDM, the evidence must support the venue-specific signature: a data-mining methods paper with careful baselines and defensible discovery claims.
  • Include limitations, negative results, compute/resource reporting, data provenance, and ethics details when they affect the claim.

Structure & house style

  • Frame the contribution as a reusable idea: method, theory, benchmark, dataset, system, or socio-technical finding.
  • Separate main claims from exploratory results; reviewers at top AI venues punish overclaiming and hidden cherry-picking.
  • Use the current official template exactly; do not guess page limits, font sizes, supplement rules, anonymity exceptions, or camera-ready requirements from old cycles.
  • The introduction should answer: problem, why now, what is new, why this venue, and what evidence proves the claim.
  • Put the strongest result in the main paper, not only in the appendix or supplement; reviewers should not have to reconstruct the contribution.

Official-cycle checklist

  • Open the live official venue page: https://www.computer.org/csdl/proceedings/icdm
  • Re-check the current cycle's CFP, author kit, submission system, abstract/paper deadlines, page limits, supplementary-material rules, anonymity policy, dual-submission policy, ethics policy, AI-use policy, artifact/code/data expectations, rebuttal/author-response format, and camera-ready requirements.
  • Confirm the review workflow and portal: OpenReview / CMT / HotCRP / PCS / START or society portal, as specified for the current cycle.
  • Check whether accepted papers require in-person presentation, separate registration, artifact badges, proceedings copyright, or post-acceptance release forms.
  • If the live official instructions conflict with this skill, the official instructions win.

Pre-submission self-check

  • One sentence states why this manuscript belongs at ICDM, using the venue's scope rather than generic "top conference" language.
  • The claim is calibrated to the evidence: no broader than the datasets, proofs, systems, user studies, deployments, or threat model support.
  • Related work includes the nearest current-cycle data mining papers and explains the technical delta.
  • The paper satisfies the current official template, anonymity, ethics, artifact, and rebuttal requirements.
  • The main paper is self-contained enough for reviewers to evaluate novelty and correctness without hunting through external links.

Common desk-reject triggers

  • Leaderboard-only novelty with weak explanation of why the method works.
  • Unclear data contamination, missing baselines, or evaluation that cannot be reproduced.
  • Claims about safety, fairness, health, or society without matching evidence and limitations.
  • Formatting, anonymity, dual-submission, external-link, or supplement violations under the current-year policy.
  • A contribution framed for a neighboring field while giving ICDM reviewers too little technical or empirical substance.

Re-routing decision

If the paper misses ICDM's bar, compare against neural-information-processing-systems / international-conference-on-machine-learning / international-conference-on-learning-representations / aaai-conference-on-artificial-intelligence. Re-route based on contribution type, not prestige: theory to a theory venue, systems to a systems venue, application-heavy work to a domain venue, and early ideas to workshops or shorter tracks when the official CFP supports them.

Output format

[Fit] High / Medium / Low (one-line reason)
[Target] IEEE International Conference on Data Mining (ICDM)
[Contribution type] algorithm / theory / system / dataset / benchmark / empirical / design / security / other
[Main evidence gap] <single most important missing proof, experiment, study, artifact, or policy check>
[Official items to re-check] CFP / author kit / deadline / format / anonymity / ethics / AI-use / artifact / rebuttal / camera-ready
[Top rejection risk] <venue-specific risk>
[Re-route suggestion] <better-matched conference or journal if not a fit>
Install via CLI
npx skills add https://github.com/brycewang-stanford/Awesome-Journal-Skills --skill ieee-international-conference-on-data-mining
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