Title :
Sliced inverse regression with conditional entropy minimization
Author :
Hino, Hideitsu ; Wakayama, K. ; Murata, Norio
Author_Institution :
Waseda Univ., Tokyo, Japan
Abstract :
An appropriate dimension reduction of raw data helps to reduce computational time and to reveal the intrinsic structure of complex data. In this paper, a dimension reduction method for regression is proposed. The method is based on the well-known sliced inverse regression and conditional entropy minimization. Using entropy as a measure of dispersion of data distribution, dimension reduction subspace is estimated without assuming regression function form nor data distribution, unlike conventional sliced inverse regression. The proposed method is shown to perform well compared to some conventional methods through experiments using both artificial and real-world data sets.
Keywords :
data mining; data reduction; entropy; minimisation; regression analysis; artificial data sets; complex data intrinsic structure; computational time reduction; conditional entropy minimization; data distribution dispersion; dimension reduction subspace estimation; nor data distribution; raw data dimension reduction; real-world data sets; regression function; sliced inverse regression; Covariance matrix; Entropy; Estimation; Kernel; Linear programming; Mathematical model; Minimization;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
Print_ISBN :
978-1-4673-2216-4