A curated, continuously-updated index of algorithmic fairness in clustering — definitions, contributions, and open problems for the TCS & ML communities.
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A new fairness notion becomes a new tag in the taxonomy, so it needs maintainer review. Please first check it isn't one of the existing notions: Group fairness (balance), Individual fairness, Socially fair (min-max), Proportional / core.
Opens a pre-filled GitHub issue labelled notion-proposal. A maintainer reviews it and, if accepted, adds the new tag to the taxonomy.
Opens a pre-filled GitHub issue. Every submission is manually reviewed and approved by a maintainer before it appears — nothing is added automatically.
Your suggestion opens a pre-filled GitHub issue. It is manually reviewed and approved by a maintainer before any change is applied.
Scraped by the discovery bot or submitted by users. Accept publishes to the repository (and queues it for the survey update); Reject removes it and blacklists it from future automatic suggestions (a user can still submit it manually). Partial reviews are fine — apply the ones you've decided and the rest stay queued. Applying opens a pull request: merge to finalize; once merged, decided papers leave this queue and accepted ones appear as normal papers.
Papers accepted since the survey was last updated. Copy the prompt, paste it to Claude to integrate them into the survey, then clear the queue.
Title-similar papers already in the database. Use "Select to remove" to drop a true duplicate. IDs shown for reference.