This paper presents a general method for incorporating prior knowledge into kernel methods. It applies when the prior knowledge can be formalized by the description of an object around each sample of the training set, assuming that all points in the given object share the same desired class. Two implementation techniques of this method, based on analytical kernel jittering and the vicinal risk minimization principle, are considered. Empirical results on one artificial dataset and one real dataset based on EEG signals demonstrate the performance of the proposed method.
Type
report
Author(s)
Pozdnoukhov, Alexei
Date Issued
2003
Publisher
IDIAP
Note
Submitted to Neural Information Processing Systems 2003
Written at
EPFL
EPFL units
Available on Infoscience
March 10, 2006
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