22.06.2026
32 Paper bei ICML 2026 akzeptiert
Bei der diesjährigen ICML-Konferenz wurden 32 Beiträge von Forschenden unseres Exzellenzclusters akzeptiert.
Die 43. International Conference on Machine Learning (ICML) findet in Seoul in Südkorea vom 6. - 11. Juli 2026 statt. ICML ist die führende Konferenz für Maschinelles Lernen. Ziel der jährlichen Treffen ist es, den Forschungsaustausch zum Maschinellen Lernen in ihren technologischen, mathematischen und theoretischen Aspekten zu fördern. Der Schwerpunkt liegt auf peer-reviewed, neuartigen Forschungsarbeiten, die in einer allgemeinen Session vorgestellt und diskutiert werden, sowie auf eingeladenen Vorträgen von ausgewiesenen Experten.
In diesem Jahr ist unser Cluster mit 32 Papern auf der ICML vertreten.
Liste der akzeptierten Beiträge unserer Mitglieder (hervorgehoben) und ihren Teammitgliedern (alle Beiträge sind hier zu finden):
- Ilze Amanda Auzina, Joschka Strüber, Sergio Hernández-Gutiérrez, Shashwat Goel, Ameya Pandurang Prabhu, Matthias Bethge
Intrinsic Credit Assignment for Long Horizon Interaction - Jana Zeller, Thaddäus Wiedemer, Fanfei Li, Thomas Klein, Prasanna Mayilvahanan, Matthias Bethge, Felix Wichmann, Ryan Cotterell, Wieland Brendel
MentisOculi: Revealing the Limits of Reasoning with Mental Imagery - Ben Rank, Hardik Bhatnagar, Ameya Pandurang Prabhu, Shira Eisenberg, Karina Nguyen, Matthias Bethge, Maksym Andriushchenko
PostTrainBench: Can LLM Agents Automate LLM Post-Training? - Cagatay Yildiz, Nishaanth Kanna, Nitin Sharma, Matthias Bethge, Beyza Ermis
Investigating Continual Pretraining in Large Language Models: Insights and Implications - Shruti Joshi, Aaron Mueller, David Klindt, Wieland Brendel, Dhanya Sridhar, Patrik Reizinger
Position: Causality is Key for Interpretability Claims to Generalise - Jack Brady, Bernhard Schölkopf, Thomas Kipf, Simon Buchholz, Wieland Brendel
Generation is Required for Data-Efficient Perception - Manuel Traub, Martin V Butz
Looking Locally: Object-Centric Vision Transformers as Foundation Models for Efficient Segmentation - Moritz Brösamle, Stephan Eckstein
The Expressive Power of Low Precision Softmax Transformers with (Summarized) Chain-of-Thought - Fabian Morelli, Stephan Eckstein
Partial Fusion of Neural Networks: Efficient Tradeoffs Between Ensembles and Weight Aggregation - Haofei Xu, Rundi Wu, Philipp Henzler, Nikolai Kalischek, Michael Oechsle, Fabian Manhardt, Marc Pollefeys, Andreas Geiger, Federico Tombari, Michael Niemeyer
PointDiT: Pixel-Space Diffusion for Monocular Geometry Estimation - Ricardo Dominguez-Olmedo, Bernhard Schölkopf, Moritz Hardt
Computational Arbitrage in AI Model Markets - Mina Remeli, Moritz Hardt
Correct looks better: Pairwise comparisons reveal accuracy rankings - Yatong Chen, Guanhua Zhang, Moritz Hardt
Leaderboard Incentives: Model Rankings under Strategic Post-Training - Nikhil Chandak, Shashwat Goel, Ameya Pandurang Prabhu, Moritz Hardt, Jonas Geiping
Curating the Future: A Scalable Recipe for Training Open-Ended Forecasters - Tim Weiland, Philipp Hennig
Scalable Bayesian Inference for Nonlinear Conservation Laws - Arik Reuter, Anish Dhir, Cristiana Diaconu, Jake Robertson, Ole Ossen, Frank Hutter, Adrian Weller, Mark van der Wilk, Bernhard Schölkopf
Use What You Know: Causal Foundation Models with Partial Graphs - Herilalaina Rakotoarison, Steven Adriaensen, Tom Viering, Samuel Gabriel Müller, Carl Hvarfner, Frank Hutter, Eytan Bakshy
$\alpha$-PFN: Fast Entropy Search via In-Context Learning - Tom Sühr, Florian Dorner, Olawale Salaudeen, Augustin Kelava, Samira Samadi
Position: Stop evaluating AI with human tests, develop principled, AI-specific tests instead - Han Wang, Weijie Wang, Jiaqi Liu, Hilde Kuehne, Nicu Sebe
Deep Trajectory Supervision: Deep Supervision Strikes Back - Stefan Wahl, Raphaela Schenk, Ali Farnoud, Jakob Macke, Daniel Gedon
A Probabilistic Framework for LLM-Based Model Discovery - Manuel Glöckler, Jose Pedro JP Manzano-Patron, Stamatios Sotiropoulos, Cornelius Schröder, Jakob Macke
Scalable Simulation-Based Model Inference with Test-Time Complexity Control - Mikel Zhobro, Andreas René Geist, Georg Martius
Learning 3D-Gaussian Simulators from RGB Videos - Anselm Paulus, Andreas René Geist, Vit Musil, Sebastian Hoffmann, Georg Martius
SoftJAX & SoftTorch: Empowering Automatic Differentiation Libraries with Informative Gradients - Marco Bagatella, Mert Albaba, Jonas Hübotter, Georg Martius, Andreas Krause
Test-time Offline Reinforcement Learning on Goal-related Experience - Alina Wernick, Kristof Meding
Position: EU AI Act's Research Exemptions Can Break the Publication Norms of Major AI Conferences - Ruta Binkyte, Ivaxi Sheth, Zhijing Jin, Mohammad Havaei, Bernhard Schölkopf, Mario Fritz
Position: Trustworthy AI Suffers from Invariance Conflicts and Causality is The Solution - Sirui Lu, Zhijing Jin, Terry Zhang, Pavel Kos, Juan Cirac, Bernhard Schölkopf
Position: LLM for Physics Research Requires Domain-Specialized Training and Tooling - Samuel Simko, Punya Pandey, Zhijing Jin, Bernhard Schölkopf
Training with Honeypots: Reshaping How LLMs Fail - Sawal Acharya, Terry Zhang, Andrew Kim, Anahita Haghighat, Xianlin Sun, Pepijn Cobben, Rahul Shrestha, Maximilian Mordig, Jacob Emmerson, Furkan Danisman, Yuen Chen, Clijo Jose, Andrei Muresanu, Justin Cui, Jiarui Liu, Yahang Qi, Punya Pandey, Yinya Huang, Bernhard Schölkopf, Zhijing Jin
CauSciBench: Evaluating LLM Causal Inference for Scientific Research - Ziheng Chen, Xiaojun Wu, Bernhard Schölkopf, Nicu Sebe
Riemannian Networks over Full-Rank Correlation Matrices - David Guzman Piedrahita, Dave Banerjee, Changling Li, Terry Zhang, Kevin Blin, Samuel Simko, Punya Pandey, Irene Strauss, Rada Mihalcea, Bernhard Schölkopf, Zhijing Jin
Position: Safe Models Do Not Guarantee Safe Societies: The Case for Sociopolitical Risk - Onno Eberhard, Claire Vernade, Michael Muehlebach
Commit to the Bit: Reactive Reinforcement Learning Done Right