Thore Graepel, Ralf Herbrich, Bernhard Schölkopf, Alex Smola, Peter Bartlett, Klaus Robert-Müller, Klaus Obermayer, and Robert Williamson
January 1999
We provide a new linear program to deal with classification of data in the case of data given in terms of pairwise proximities. This allows to avoid the problems inherent in using feature spaces with indefinite metric in Support Vector Machines, since the notion of a margin is purely needed in input space where the classification actually occurs. Moreover in our approach we can enforce sparsity in the proximity representation by sacrificing training error. This turns out to be favorable for proximity data. Similar to nu–SV methods, the only parameter needed in the algorithm is the (asymptotical) number of data points being classified with a margin. Finally, the algorithm is successfully compared with nu–SV learning in proximity space and K–nearest-neighbors on real world data from Neuroscience and molecular biology.
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In: Proceedings of the Ninth International Conference on Artificial Neural Networks
| Type: | Inproceedings |
| Pages: | 304–309 |