Aspects in classification learning-Review of recent developments in Learning Vector Quantization M Kaden, M Lange, D Nebel, M Riedel, T Geweniger, T Villmann Foundations of Computing and Decision Sciences 39 (2), 79-105, 2014 | 75 | 2014 |
Types of (dis-) similarities and adaptive mixtures thereof for improved classification learning D Nebel, M Kaden, A Villmann, T Villmann Neurocomputing 268, 42-54, 2017 | 37 | 2017 |
Median variants of learning vector quantization for learning of dissimilarity data D Nebel, B Hammer, K Frohberg, T Villmann Neurocomputing 169, 295-305, 2015 | 33 | 2015 |
Rb-Sr dating O Nebel Encyclopedia of scientific dating methods, 686-698, 2015 | 29 | 2015 |
Investigation of activation functions for generalized learning vector quantization T Villmann, J Ravichandran, A Villmann, D Nebel, M Kaden Advances in Self-Organizing Maps, Learning Vector Quantization, Clustering …, 2020 | 21 | 2020 |
Generative versus discriminative prototype based classification B Hammer, D Nebel, M Riedel, T Villmann Advances in Self-Organizing Maps and Learning Vector Quantization …, 2014 | 20 | 2014 |
A median variant of generalized learning vector quantization D Nebel, B Hammer, T Villmann International Conference on Neural Information Processing, 19-26, 2013 | 19 | 2013 |
Rejection strategies for learning vector quantization–a comparison of probabilistic and deterministic approaches L Fischer, D Nebel, T Villmann, B Hammer, H Wersing Advances in Self-Organizing Maps and Learning Vector Quantization …, 2014 | 18 | 2014 |
Differentiable kernels in generalized matrix learning vector quantization M Kästner, D Nebel, M Riedel, M Biehl, T Villmann 2012 11th International Conference on Machine Learning and Applications 1 …, 2012 | 16 | 2012 |
Learning vector quantization with adaptive cost-based outlier-rejection T Villmann, M Kaden, D Nebel, M Biehl Computer Analysis of Images and Patterns: 16th International Conference …, 2015 | 14 | 2015 |
Building the library of RNA 3D nucleotide conformations using the clustering approach T Zok, M Antczak, M Riedel, D Nebel, T Villmann, P Lukasiak, J Blazewicz, ... International Journal of Applied Mathematics and Computer Science 25 (3 …, 2015 | 11 | 2015 |
ICMLA Face Recognition Challenge--Results of the Team Computational Intelligence Mittweida T Villmann, M Kästner, D Nebel, M Riedel 2012 11th International Conference on Machine Learning and Applications 2 …, 2012 | 10 | 2012 |
Adaptive Hausdorff distances and tangent distance adaptation for transformation invariant classification learning S Saralajew, D Nebel, T Villmann Neural Information Processing: 23rd International Conference, ICONIP 2016 …, 2016 | 9 | 2016 |
Supervised Generative Models for Learning Dissimilarity Data. D Nebel, B Hammer, T Villmann ESANN, 2014 | 9 | 2014 |
Similarities, Dissimilarities and Types of Inner Products for Data Analysis in the Context of Machine Learning: A Mathematical Characterization T Villmann, M Kaden, D Nebel, A Bohnsack Artificial Intelligence and Soft Computing: 15th International Conference …, 2016 | 8 | 2016 |
Adaptive dissimilarity weighting for prototype-based classification optimizing mixtures of dissimilarities. M Kaden, D Nebel, T Villmann ESANN, 2016 | 6 | 2016 |
Lateral enhancement in adaptive metric learning for functional data T Villmann, M Kaden, D Nebel, M Riedel Neurocomputing 131, 23-31, 2014 | 6 | 2014 |
Activation functions for generalized learning vector quantization-a performance comparison T Villmann, J Ravichandran, A Villmann, D Nebel, M Kaden arXiv preprint arXiv:1901.05995, 2019 | 4 | 2019 |
Non-Euclidean principal component analysis for matrices by Hebbian learning M Lange, D Nebel, T Villmann International Conference on Artificial Intelligence and Soft Computing, 77-88, 2014 | 4 | 2014 |
Median variants of LVQ for optimization of statistical quality measures for classification of dissimilarity data D Nebel, T Villmann Machine Learning Reports 8 (MLR-03-2014), 1-25, 2014 | 3 | 2014 |