Next: Introduction
Comparison of Log-Linear Models and
Weighted Dissimilarity Measures
Daniel Keysers, Roberto Paredes,
Enrique Vidal, and Hermann Ney
Abstract:
We compare two successful discriminative classification algorithms on
three databases from the UCI and STATLOG repositories. The two
approaches are the log-linear model for the class posterior
probabilities and class-dependent weighted dissimilarity measures for
nearest neighbor classifiers. The experiments show that the maximum
entropy based log-linear classifier performs better for the equivalent
of a single prototype. On the other hand, using multiple prototypes
the weighted dissimilarity measures outperforms the log-linear
approach. This result suggests an extension of the log-linear method
to multiple prototypes.
Daniel Keysers
2004-03-10