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Moritz Seiler
Moritz Seiler
PostDoc, Machine Learning and Optimisation, Paderborn University
Verified email at uni-paderborn.de
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Cited by
Year
Deep learning as a competitive feature-free approach for automated algorithm selection on the traveling salesperson problem
M Seiler, J Pohl, J Bossek, P Kerschke, H Trautmann
International Conference on Parallel Problem Solving from Nature, 48-64, 2020
322020
FakeYou!-a gamified approach for building and evaluating resilience against fake news
L Clever, D Assenmacher, K Müller, MV Seiler, DM Riehle, M Preuss, ...
Multidisciplinary international symposium on disinformation in open online …, 2020
292020
Moderator- and Crowd-Annotated German News Comment Datasets
D Assenmacher, M Niemann, K Müller, M Seiler, DM Riehle, H Trautmann
Thirty-fifth conference on neural information processing systems datasets …, 2021
252021
A collection of deep learning-based feature-free approaches for characterizing single-objective continuous fitness landscapes
MV Seiler, RP Prager, P Kerschke, H Trautmann
Proceedings of the Genetic and Evolutionary Computation Conference, 657-665, 2022
212022
Automated algorithm selection in single-objective continuous optimization: a comparative study of deep learning and landscape analysis methods
RP Prager, MV Seiler, H Trautmann, P Kerschke
International Conference on Parallel Problem Solving from Nature, 3-17, 2022
202022
A Twitter Streaming Dataset collected before and after the Onset of the War between Russia and Ukraine in 2022
J Pohl, MV Seiler, D Assenmacher, C Grimme
Available at SSRN 4066543, 2022
202022
Towards feature-free automated algorithm selection for single-objective continuous black-box optimization
RP Prager, MV Seiler, H Trautmann, P Kerschke
2021 IEEE Symposium Series on Computational Intelligence (SSCI), 1-8, 2021
182021
A study on the effects of normalized TSP features for automated algorithm selection
J Heins, J Bossek, J Pohl, M Seiler, H Trautmann, P Kerschke
Theoretical Computer Science 940, 123-145, 2023
142023
Deep-ela: Deep exploratory landscape analysis with self-supervised pretrained transformers for single-and multi-objective continuous optimization problems
MV Seiler, P Kerschke, H Trautmann
Evolutionary Computation, 1-27, 2025
102025
Artificial Social Media Campaign Creation for Benchmarking and Challenging Detection Approaches.
JS Pohl, D Assenmacher, MV Seiler, H Trautmann, C Grimme
ICWSM Workshops, 2022
62022
On the potential of normalized tsp features for automated algorithm selection
J Heins, J Bossek, J Pohl, M Seiler, H Trautmann, P Kerschke
Proceedings of the 16th ACM/SIGEVO Conference on Foundations of Genetic …, 2021
52021
Using Reinforcement Learning for Per-Instance Algorithm Configuration on the TSP
MV Seiler, J Rook, J Heins, OL Preuß, J Bossek, H Trautmann
2023 IEEE Symposium Series on Computational Intelligence (SSCI), 361-368, 2023
42023
Evaluation of machine learning-based classification of clinical impairment and prediction of clinical worsening in multiple sclerosis
S Noteboom, M Seiler, C Chien, RP Rane, F Barkhof, EMM Strijbis, F Paul, ...
Journal of Neurology 271 (8), 5577-5589, 2024
22024
Synergies of deep and classical exploratory landscape features for automated algorithm selection
M Seiler, U Škvorc, C Doerr, H Trautmann
International Conference on Learning and Intelligent Optimization, 361-376, 2024
22024
Landscape Features in Single-Objective Continuous Optimization: Have We Hit a Wall in Algorithm Selection Generalization?
G Cenikj, G Petelin, M Seiler, N Cenikj, T Eftimov
arXiv preprint arXiv:2501.17663, 2025
2025
Pioneering new paths: the role of generative modelling in neurological disease research
M Seiler, K Ritter
Pflügers Archiv-European Journal of Physiology, 1-19, 2024
2024
Learned Features vs. Classical ELA on Affine BBOB Functions
M Seiler, U Škvorc, G Cenikj, C Doerr, H Trautmann
International Conference on Parallel Problem Solving from Nature, 137-153, 2024
2024
Potential and Challenges of Feature-free Automated Algorithm Selection and Configuration
MV Seiler
Universität Münster, 2023
2023
Enhancing Resilience of Deep Learning Networks By Means of Transferable Adversaries
M Seiler, H Trautmann, P Kerschke
2020 International Joint Conference on Neural Networks (IJCNN), 1-8, 2020
2020
Machine learning based prediction of clinical progression in multiple sclerosis
S Noteboom, M Seiler, C Chien, RP Rane, EMM Strijbis, F Paul, ...
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