No. |
Title |
Author |
Year |
1 |
Learning in the context of very high dimensional data (Dagstuhl Seminar 11341) |
Biehl, Michael et al. |
2011 |
2 |
10302 Abstracts Collection -- Learning paradigms in dynamic environments |
Hammer, Barbara et al. |
2010 |
3 |
10302 Summary -- Learning paradigms in dynamic environments |
Hammer, Barbara et al. |
2010 |
4 |
Some steps towards a general principle for dimensionality reduction mappings |
Hammer, Barbara et al. |
2010 |
5 |
09081 Abstracts Collection -- Similarity-based learning on structures |
Biehl, Michael et al. |
2009 |
6 |
09081 Summary -- Similarity-based learning on structures |
Biehl, Michael et al. |
2009 |
7 |
08041 Abstracts Collection -- Recurrent Neural Networks - Models, Capacities, and Applications |
De Raedt, Luc et al. |
2008 |
8 |
08041 Summary -- Recurrent Neural Networks - Models, Capacities, and Applications |
De Raedt, Luc et al. |
2008 |
9 |
A general framework for unsupervised preocessing of structured data |
Hammer, Barbara et al. |
2008 |
10 |
07131 Abstracts Collection -- Similarity-based Clustering and its Application to Medicine and Biology |
Biehl, Michael et al. |
2007 |
11 |
07131 Summary -- Similarity-based Clustering and its Application to Medicine and Biology |
Biehl, Michael et al. |
2007 |
12 |
Learning Vector Quantization: generalization ability and dynamics of competing prototypes |
Witoelar, Aree et al. |
2007 |
13 |
Relational Clustering |
Hammer, Barbara et al. |
2007 |