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  4. KDD 2025 2nd-round Review Results: How Did Your Paper Do?

KDD 2025 2nd-round Review Results: How Did Your Paper Do?

Scheduled Pinned Locked Moved Data Mining & Database
kdd2025rebuttal
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  • SylviaS Offline
    SylviaS Offline
    Sylvia
    Super Users
    wrote on last edited by
    #15

    The KDD PC just opened the comment phase until Apr 18 (AoE). You can respond to reviewer follow-ups or raise concerns to AC/SAC via the Official Comment button.

    ⚠️ A few don’ts:

    • No URLs — they’ll auto-delete your comment.
    • No bypassing rebuttal limits — don’t treat comments as extra rebuttal space.
    • Don’t badger reviewers — 1 ping is enough.
    • Stay respectful — tone matters.

    Good luck everyone 🤞

    1 Reply Last reply
    1
    • riverR river

      I made a summary of data points from KDD 2025 1st round results:

      Novelty Scores Technical Quality Scores Confidence Scores Rebuttal Outcome Final Decision Notes
      3 3 3 3 3 3 4 3 3 2 3 2 – Addressed issues ✅ Accepted "Rebuttal is so difficult with all the twists and turns"
      2 2 3 2 2 3 3 2 2 3 3 3 3 3 3 Submitted ❌ Rejected "Can I just run away?"
      4 3 3 1 4 4 2 2 – Explained issues ❌ Rejected "Large variance across reviewers; no score changes post-rebuttal"
      3 3 3 3 3 2 – Unsure 🟡 Unknown "Still considering rebuttal; not sure if it's worth the effort"
      3 3 3 3 3 3 3 3 3 3 3 2 – Minor clarifications ✅ Accepted "Final scores unchanged but accepted after positive AC decision"
      3 4 3 3 3 3 2 2 3 2 2 3 – Clarified results ❌ Rejected "Novelty OK, but TQ too weak; didn't convince reviewers"
      3 3 3 3 3 3 3 3 3 3 3 3 3 3 3 3 3 Submitted ✅ Accepted "Strong consensus; one of the smoother cases"
      3 3 3 3 3 2 – No rebuttal ❌ Rejected "No rebuttal submitted; borderline scores"
      3 3 2 2 3 3 2 2 – Rebuttal sent ❌ Rejected "Reviewers did not change their opinion"
      3 3 3 3 3 3 3 3 3 3 2 2 – Rebuttal helped ✅ Accepted "Accepted despite one weaker reviewer"
      3 3 3 3 3 3 3 3 3 3 3 3 Rebuttal sent 🟡 Unknown "In limbo; waiting for final decision"
      3 3 3 3 2 2 2 2 – Not convincing ❌ Rejected "Work deemed not ‘KDD-level’ despite rebuttal"
      3 3 3 3 3 3 3 3 3 3 3 3 3 3 3 3 3 Submitted ✅ Accepted "Perfectly consistent reviewers; smooth acceptance"
      3 3 3 2 3 3 2 2 – Rebuttal failed ❌ Rejected "Low technical quality and variance led to rejection"

      📌 Note: Data sourced from community discussions on Zhihu, Reddit, and OpenReview threads. Subject to sample bias.

      Hsi Ping LiH Offline
      Hsi Ping LiH Offline
      Hsi Ping Li
      wrote last edited by Hsi Ping Li
      #16

      @river Hi river,

      Excuse me, do you know if these scores are the final scores after the rebuttal? Really appreciate it if you could provide more information about this 🙂

      riverR 1 Reply Last reply
      0
      • Nilesh VermaN Nilesh Verma

        what are the chances of acceptance in KDD feb, here is my score

        Relevance: 3.5 (based on 4, 3, 4, 3, 4)
        Novelty: 3.0 (based on 4, 3, 2, 3, 2)
        Technical Quality: 3.0 (based on 3, 3, 3, 3, 3)
        Presentation: 2.8 (based on 3, 3, 3, 2, 3)
        Reproducibility: 3.0 (based on 3, 3, 3, 3, 3)
        Reviewer Confidence: 3.4 (based on 3, 4, 3, 4, 3)

        Hsi Ping LiH Offline
        Hsi Ping LiH Offline
        Hsi Ping Li
        wrote last edited by
        #17

        @Nilesh-Verma Hi Nilesh, I am sure the scores of your paper are higher than those of most authors. Congs. Besides, did your reviewers increase their ratings for your paper in the rebuttal process?

        1 Reply Last reply
        1
        • Hsi Ping LiH Hsi Ping Li

          @river Hi river,

          Excuse me, do you know if these scores are the final scores after the rebuttal? Really appreciate it if you could provide more information about this 🙂

          riverR Offline
          riverR Offline
          river
          wrote last edited by
          #18

          @Hsi-Ping-Li

          This the best effort scores, meaning I take the latest available scores reported in the community. If they are updated by the authors after rebuttal, then I take that, otherwise I would assume the scores did not change.

          For the data points with accept/reject outcome, I think all of them are post-rebuttal scores.

          Hsi Ping LiH 1 Reply Last reply
          1
          • M magicparrots

            A data point:

            GNN work, got

            Novelty: 3, 2, 2, 3, 2
            Technical Quality: 2, 2, 2, 2, 2
            Confidence: 3, 4, 3, 4, 4

            Need to rebuttal? anyone knows more? 2 weeks challenge ahead!

            Hsi Ping LiH Offline
            Hsi Ping LiH Offline
            Hsi Ping Li
            wrote last edited by
            #19

            @magicparrots

            Hi magicparrots!

            did the reviewers raise their scores for your paper after the rebuttal process?
            I also submitted a paper about GNN, and only one reviewer out of five raised 1 score for my paper 😞

            1 Reply Last reply
            0
            • riverR river

              @Hsi-Ping-Li

              This the best effort scores, meaning I take the latest available scores reported in the community. If they are updated by the authors after rebuttal, then I take that, otherwise I would assume the scores did not change.

              For the data points with accept/reject outcome, I think all of them are post-rebuttal scores.

              Hsi Ping LiH Offline
              Hsi Ping LiH Offline
              Hsi Ping Li
              wrote last edited by
              #20

              @river Many thanks for your details! 🙂

              1 Reply Last reply
              0
              • rootR Offline
                rootR Offline
                root
                wrote last edited by
                #21

                Stats from official email:

                The Research Track of KDD 2025 (February Cycle) received 1988 submissions, with an overall acceptance rate of ~18.4%. All submissions received at least three reviews, while most had four or five. Area Chairs provided meta-reviews and preliminary recommendations, which were deliberated further by the Senior Area Chairs and decided on by the Program Chairs.

                ...

                A submission rejected from the Research Track may not be resubmitted within 12 months to the KDD Research Track (i.e., the earliest resubmission date of your paper to the KDD research track is February 2026).

                1 Reply Last reply
                0
                • JoanneJ Offline
                  JoanneJ Offline
                  Joanne
                  wrote last edited by
                  #22

                  Thanks for the information. Especially the resubmission restriction. Something to watch out for when planning next steps.

                  1 Reply Last reply
                  0
                  • JoanneJ Offline
                    JoanneJ Offline
                    Joanne
                    wrote last edited by
                    #23

                    KDD 2025 (February Cycle) – What the Score Patterns Reveal

                    After combing through 22 self-reported results, three consistent patterns jump out:

                    • All-3’s are not lethal. Several papers with a flat 3-3 profile survived because nobody down-voted hard and the Area Chair (AC) was on their side.
                    • 4–2 vs 3–3 is still a coin-flip. A spiky 4–2 pair can trump steady 3–3s, yet clean consistency sometimes wins when the AC trusts uniform support.
                    • Reviewer kindness matters. A single upgrade (e.g., Technical 3 → 4) in the last round carried borderline submissions over the line.

                    Who Actually Got In? – Mini Score Sheet

                    Alias Final Mean (N / T) Earlier Lows Verdict
                    author 1 #1 3.6 / 4.0 early 3-3-4 mix ✅ Accept
                    author 1 #2 3.6 / 3.4 weaker T ✅ Accept
                    author 2 ≈ 3.2 / 2.8 one reviewer gave 2 / 2 ✅ Accept — “kind-hearted AC”
                    author 3 3.0 / 3.0 flat all-3’s ✅ Accept
                    author 4 3.0 / 3.0 two negative votes (2 / 2) ✅ Accept
                    author 5 3.4 / 4.0 T started 3-3-2-2-2 ✅ Accept — generous reviewer bumped T to 4

                    Messages from this Small Sample

                    1. ≈ 3.0 averages can pass — the AC’s veto (positive or negative) is the real gatekeeper.
                    2. One low score plus a confident critique can still sink you — numbers alone aren’t everything.
                    3. Polite, point-by-point rebuttals can move scores, though not as often as we’d like.

                    How's your scores? We will make a new pattern after you share with us your.

                    C 1 Reply Last reply
                    1
                    • JoanneJ Joanne

                      KDD 2025 (February Cycle) – What the Score Patterns Reveal

                      After combing through 22 self-reported results, three consistent patterns jump out:

                      • All-3’s are not lethal. Several papers with a flat 3-3 profile survived because nobody down-voted hard and the Area Chair (AC) was on their side.
                      • 4–2 vs 3–3 is still a coin-flip. A spiky 4–2 pair can trump steady 3–3s, yet clean consistency sometimes wins when the AC trusts uniform support.
                      • Reviewer kindness matters. A single upgrade (e.g., Technical 3 → 4) in the last round carried borderline submissions over the line.

                      Who Actually Got In? – Mini Score Sheet

                      Alias Final Mean (N / T) Earlier Lows Verdict
                      author 1 #1 3.6 / 4.0 early 3-3-4 mix ✅ Accept
                      author 1 #2 3.6 / 3.4 weaker T ✅ Accept
                      author 2 ≈ 3.2 / 2.8 one reviewer gave 2 / 2 ✅ Accept — “kind-hearted AC”
                      author 3 3.0 / 3.0 flat all-3’s ✅ Accept
                      author 4 3.0 / 3.0 two negative votes (2 / 2) ✅ Accept
                      author 5 3.4 / 4.0 T started 3-3-2-2-2 ✅ Accept — generous reviewer bumped T to 4

                      Messages from this Small Sample

                      1. ≈ 3.0 averages can pass — the AC’s veto (positive or negative) is the real gatekeeper.
                      2. One low score plus a confident critique can still sink you — numbers alone aren’t everything.
                      3. Polite, point-by-point rebuttals can move scores, though not as often as we’d like.

                      How's your scores? We will make a new pattern after you share with us your.

                      C Offline
                      C Offline
                      cocktailfreedom
                      Super Users
                      wrote last edited by
                      #24

                      @Joanne said in KDD 2025 2nd-round Review Results: How Did Your Paper Do?:

                      KDD 2025 (February Cycle) – What the Score Patterns Reveal

                      After combing through 22 self-reported results, three consistent patterns jump out:

                      • All-3’s are not lethal. Several papers with a flat 3-3 profile survived because nobody down-voted hard and the Area Chair (AC) was on their side.
                      • 4–2 vs 3–3 is still a coin-flip. A spiky 4–2 pair can trump steady 3–3s, yet clean consistency sometimes wins when the AC trusts uniform support.
                      • Reviewer kindness matters. A single upgrade (e.g., Technical 3 → 4) in the last round carried borderline submissions over the line.

                      Who Actually Got In? – Mini Score Sheet

                      Alias Final Mean (N / T) Earlier Lows Verdict
                      author 1 #1 3.6 / 4.0 early 3-3-4 mix ✅ Accept
                      author 1 #2 3.6 / 3.4 weaker T ✅ Accept
                      author 2 ≈ 3.2 / 2.8 one reviewer gave 2 / 2 ✅ Accept — “kind-hearted AC”
                      author 3 3.0 / 3.0 flat all-3’s ✅ Accept
                      author 4 3.0 / 3.0 two negative votes (2 / 2) ✅ Accept
                      author 5 3.4 / 4.0 T started 3-3-2-2-2 ✅ Accept — generous reviewer bumped T to 4

                      Messages from this Small Sample

                      1. ≈ 3.0 averages can pass — the AC’s veto (positive or negative) is the real gatekeeper.
                      2. One low score plus a confident critique can still sink you — numbers alone aren’t everything.
                      3. Polite, point-by-point rebuttals can move scores, though not as often as we’d like.

                      How's your scores? We will make a new pattern after you share with us your.

                      Thanks for sharing! mine got rejected though -- mean T score 2.5-ish

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