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16.10.2020

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MCML at CIKM 2020

Two Accepted Papers (2 Workshops)

29th ACM International Conference on Information and Knowledge Management, Galway, Ireland, Oct 19-23, 2020

We are happy to announce that MCML researchers have contributed a total of 2 papers to CIKM 2020: 2 Workshop papers. Congrats to our researchers!

Workshops (2 papers)

V. MelnychukE. Faerman • I. Manakov • T. Seidl
Matching the Clinical Reality: Accurate OCT-Based Diagnosis From Few Labels.
Workshop @CIKM 2020 - Workshop at the 29th ACM International Conference on Information and Knowledge Management. Galway, Ireland, Oct 19-23, 2020. PDF GitHub

Y. Ma • Z. Han • V. Tresp
Learning with Temporal Knowledge Graphs.
Workshop @CIKM 2020 - Workshop at the 29th ACM International Conference on Information and Knowledge Management. Galway, Ireland, Oct 19-23, 2020. Invited Talk. PDF

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

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