Követés
Thorben Funke
Thorben Funke
L3S Research Center, Leibniz University Hannover
E-mail megerősítve itt: l3s.de
Cím
Hivatkozott rá
Hivatkozott rá
Év
Stochastic block models: A comparison of variants and inference methods
T Funke, T Becker
PloS one 14 (4), e0215296, 2019
772019
Zorro: Valid, Sparse, and Stable Explanations in Graph Neural Networks
T Funke, M Khosla, M Rathee, A Anand
arXiv preprint arXiv:2105.08621, 2021
49*2021
Releasing Graph Neural Networks with Differential Privacy Guarantees
IE Olatunji, T Funke, M Khosla
arXiv preprint arXiv:2109.08907, 2021
382021
Complex networks of material flow in manufacturing and logistics: Modeling, analysis, and prediction using stochastic block models
T Funke, T Becker
Journal of Manufacturing Systems 56, 296-311, 2020
222020
Private graph extraction via feature explanations
IE Olatunji, M Rathee, T Funke, M Khosla
arXiv preprint arXiv:2206.14724, 2022
82022
Statistical manifold embedding for directed graphs
T Funke, T Guo, A Lancic, N Antulov-Fantulin
8th International Conference on Learning Representations (ICLR 2020)(virtual), 2020
7*2020
BAGEL: A Benchmark for Assessing Graph Neural Network Explanations
M Rathee, T Funke, A Anand, M Khosla
arXiv preprint arXiv:2206.13983, 2022
62022
Learnt Sparsification for Interpretable Graph Neural Networks
M Rathee, Z Zhang, T Funke, M Khosla, A Anand
arXiv preprint arXiv:2106.12920, 2021
62021
Stochastic block models as a modeling approach for dynamic material flow networks in manufacturing and logistics
T Funke, T Becker
Procedia CIRP 72, 539-544, 2018
62018
An Adaptive Clustering Approach for Accident Prediction
R Dadwal, T Funke, E Demidova
2021 IEEE International Intelligent Transportation Systems Conference (ITSC …, 2021
52021
Forecasting changes in material flow networks with stochastic block models
T Funke, T Becker
Procedia CIRP 81, 1183-1188, 2019
42019
A Tool for an Analysis of the Dynamic Behavior of Logistic Systems with the Instruments of Complex Networks
T Funke, T Becker
International Conference on Dynamics in Logistics, 418-425, 2018
32018
W-trace: robust and effective watermarking for GPS trajectories
R Dadwal, T Funke, M Nüsken, E Demidova
Proceedings of the 30th International Conference on Advances in Geographic …, 2022
12022
Using Vehicle Data to Enhance Prediction of Accident-Prone Areas
KS Wowo, R Dadwal, T Graen, A Fiege, M Nolting, W Nejdl, E Demidova, ...
2022 IEEE 25th International Conference on Intelligent Transportation …, 2022
12022
Machine Learning Methods for Prediction of Changes in Material Flow Networks
T Becker, T Funke
Procedia CIRP 93, 485-490, 2020
12020
The smashHitCore ontology for GDPR-compliant sensor data sharing in smart cities
A Kurteva, TR Chhetri, A Tauqeer, R Hilscher, A Fensel, K Nagorny, ...
Sensors 23 (13), 6188, 2023
2023
Ego-Vehicle Speed Prediction with Walk-Ahead
P Matesanz, N Tempelmeier, M Nolting, T Funke
2022 IEEE 25th International Conference on Intelligent Transportation …, 2022
2022
Analyzing and Predicting Material Flow Networks Using Stochastic Block Models and Statistical Graph Embeddings
T Funke
Universität Bremen, 2020
2020
Systematisierung der Anforderungserhebung für die Incident-Auswertung bei einem Automobilzulieferer
T Funke
A rendszer jelenleg nem tudja elvégezni a műveletet. Próbálkozzon újra később.
Cikkek 1–19