Sufficient Component Analysis for Supervised Dimension Reduction
Abstract
The purpose of sufficient dimension reduction (SDR) is to find the low-dimensional subspace of input features that is sufficient for predicting output values. In this paper, we propose a novel distribution-free SDR method called sufficient component analysis (SCA), which is computationally more efficient than existing methods. In our method, a solution is computed by iteratively performing dependence estimation and maximization: Dependence estimation is analytically carried out by recently-proposed least-squares mutual information (LSMI), and dependence maximization is also analytically carried out by utilizing the Epanechnikov kernel. Through large-scale experiments on real-world image classification and audio tagging problems, the proposed method is shown to compare favorably with existing dimension reduction approaches.
Keywords
Cite
@article{arxiv.1103.4998,
title = {Sufficient Component Analysis for Supervised Dimension Reduction},
author = {Makoto Yamada and Gang Niu and Jun Takagi and Masashi Sugiyama},
journal= {arXiv preprint arXiv:1103.4998},
year = {2011}
}