TY - GEN AU - Karampatziakis, Nikos AU - Mineiro, Paul A2 - T1 - Discriminative Features via Generalized Eigenvectors JO - PB - C1 - PY - 2013/ VL - IS - SP - EP - UR - http://arxiv.org/abs/1310.1934 DO - KW - analysis KW - eigenvector KW - feature KW - kallimachos L1 - N1 - Discriminative Features via Generalized Eigenvectors N1 - AB - Representing examples in a way that is compatible with the underlying

classifier can greatly enhance the performance of a learning system. In this

paper we investigate scalable techniques for inducing discriminative features

by taking advantage of simple second order structure in the data. We focus on

multiclass classification and show that features extracted from the generalized

eigenvectors of the class conditional second moments lead to classifiers with

excellent empirical performance. Moreover, these features have attractive

theoretical properties, such as inducing representations that are invariant to

linear transformations of the input. We evaluate classifiers built from these

features on three different tasks, obtaining state of the art results. ER -