ML@RPTU

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ML@RPTU

ML@RPTU

@mlrptu

We are the Machine Learning group at RPTU!

Kaiserslautern, Germany Katılım Nisan 2023
7 Takip Edilen14 Takipçiler
ML@RPTU
ML@RPTU@mlrptu·
Special thanks to our Keynote speakers: Venkat Venkatasubramanian (@ProfVenkat7), Dominik Grimm (@dg_grimm), and Felix Strieth-Kalthoff (@felix_s_k) for their incredible talks and insights! 🎤👏 Their contributions made the event truly memorable.
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ML@RPTU
ML@RPTU@mlrptu·
🚀 We had an incredible time hosting the ML4CCE Workshop at @ECMLPKDD 2024! 💡🔬 Experts from machine learning and chemical engineering came together to explore exciting topics like molecular design, process control, and anomaly detection, among others. 🎓✨
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ML@RPTU
ML@RPTU@mlrptu·
🎉 Excited to announce our two papers accepted at IJCAI 2024 (@IJCAIconf): The papers tackle crucial challenges in language understanding and multimodal learning. We will be presenting them at the conference. #IJCAI2024 #AI #NLP #MultimodalLearning
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ML@RPTU@mlrptu·
"Evaluating Dynamic Topic Models" 📝 We propose a novel evaluation measure for DTMs analyzing topic quality changes over time. This extension combines topic quality with temporal consistency, aiding in identifying changing topics and guiding future research.
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ML@RPTU@mlrptu·
2. "Numerically Tight Generalization Bounds for Adversarial Risk in Stochastic Neural Networks" by W. Mustafa et al. 📝 Our novel generalization bounds predict model performance and robustness on unseen data in adversarial settings.
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ML@RPTU@mlrptu·
📝 In this paper, we dynamically adapt RL agents' behavior for moral decision-making by incorporating moral scores into the training objective. Findings highlight trade-offs between immoral behavior and performance.
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ML@RPTU@mlrptu·
📝 "Interpretable Tensor Fusion" introduces InTense, a multimodal learning method providing interpretability by disentangling data representations and their fusion.
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ML@RPTU@mlrptu·
2. "Interpretable Tensor Fusion" Authors: S. Varshneya, A. Ledent, P. Liznerski, A. Balinskyy, P. Mehta, W. Mustafa, and M. Kloft.
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ML@RPTU@mlrptu·
📝 Text Style Transfer Evaluation Using Large Language Models. Presenting findings at #LREC-#COLING 2024. Our study explores LLMs' potential in TST assessment, revealing promising correlations with human evaluations. A new avenue for TST assessment emerges. #NLProc #AI
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ML@RPTU@mlrptu·
🕺 Ready to groove to the perfect beat? Our research tackles the challenge of predicting difficulty levels in StepMania levels as an ordinal regression task with neural network-based models, outperforming the rest! The work will be presented at #ECML . #ECML_2023
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