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06.12.2024

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Teaser image to MCML at ICDM 2024

MCML at ICDM 2024

Two Accepted Papers (1 Main, and 1 Workshop)

24th IEEE International Conference on Data Mining, Abu Dhabi, United Arab Emirates, Dec 09-12, 2024

We are happy to announce that MCML researchers have contributed a total of 2 papers to ICDM 2024: 1 Main, and 1 Workshop papers. Congrats to our researchers!

Main Track (1 paper)

A. Beer • P. Weber • L. Miklautz • C. LeiberW. Durani • C. Böhm • C. Plant
SHADE: Deep Density-based Clustering.
ICDM 2024 - 24th IEEE International Conference on Data Mining. Abu Dhabi, United Arab Emirates, Dec 09-12, 2024. DOI

Workshops (1 paper)

C. LeiberN. StraußM. SchubertT. Seidl
Dying Clusters Is All You Need -- Deep Clustering With an Unknown Number of Clusters.
DLC 2024 @ICDM 2024 - 6th Workshop on Deep Learning and Clustering at the 24th IEEE International Conference on Data Mining. Abu Dhabi, United Arab Emirates, Dec 09-12, 2024. DOI GitHub

#research #top-tier-work #schubert #seidl

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