Title :
Max-Min Distance Analysis by Using Sequential SDP Relaxation for Dimension Reduction
Author :
Bian, Wei ; Tao, Dacheng
Author_Institution :
Centre for Quantum Comput. & Intell. Syst., Univ. of Technol., Sydney, NSW, Australia
fDate :
5/1/2011 12:00:00 AM
Abstract :
We propose a new criterion for discriminative dimension reduction, max-min distance analysis (MMDA). Given a data set with C classes, represented by homoscedastic Gaussians, MMDA maximizes the minimum pairwise distance of these C classes in the selected low-dimensional subspace. Thus, unlike Fisher´s linear discriminant analysis (FLDA) and other popular discriminative dimension reduction criteria, MMDA duly considers the separation of all class pairs. To deal with general case of data distribution, we also extend MMDA to kernel MMDA (KMMDA). Dimension reduction via MMDA/KMMDA leads to a nonsmooth max-min optimization problem with orthonormal constraints. We develop a sequential convex relaxation algorithm to solve it approximately. To evaluate the effectiveness of the proposed criterion and the corresponding algorithm, we conduct classification and data visualization experiments on both synthetic data and real data sets. Experimental results demonstrate the effectiveness of MMDA/KMMDA associated with the proposed optimization algorithm.
Keywords :
data visualisation; face recognition; minimax techniques; pattern classification; FLDA; MMDA; data classification; data visualization; dimension reduction; max-min distance analysis; sequential SDP relaxation; sequential convex relaxation algorithm; Algorithm design and analysis; Approximation algorithms; Covariance matrix; Eigenvalues and eigenfunctions; Kernel; Optimized production technology; Fisher´s linear discriminant analysis; convex relaxation; data visualization; dimension reduction; pattern classification.;
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
DOI :
10.1109/TPAMI.2010.189