Title :
Max-K-Min Distance Analysis for Dimension Reduction
Author :
Jiani Hu ; Weihong Deng ; Jun Guo ; Yajing Xu
Author_Institution :
Sch. of Inf. & Commun. Eng., Beijing Univ. of Posts & Telecommun., Beijing, China
Abstract :
We propose a new criterion for discriminative dimension reduction, Max-K-Min Distance Analysis (MKMDA). Given a data set with C classes, MKMDA maximizes the sum of the K minimum pair wise distance of these C classes on the selected one-dimensional subspace. The set of the possible one-dimensional subspace, for which the order of the projected class centroids is identical, define a convex region with associated convex sum of K smallest margin functions. This allows for the maximization of the margin function using standard convex optimization algorithms. This result is further extended to obtain the d-dimensional subspace for any given d by iterative applying our algorithm to the null space of the (d -- 1)-dimensional subspace. The effectiveness of the proposed criterion and corresponding algorithm is shown by the visualization and classification experiments on both synthetic data and real data sets.
Keywords :
data visualisation; optimisation; pattern classification; MKMDA; classification experiments; convex region; discriminative dimension reduction; max-K-min distance analysis; one-dimensional subspace; projected class centroids; standard convex optimization algorithm; visualization experiments; Algorithm design and analysis; Data visualization; Error analysis; Linear programming; Null space; Satellites; Vectors; Dimension reduction; Discriminant analysis; Linear Discriminant Analysis;
Conference_Titel :
Pattern Recognition (ICPR), 2014 22nd International Conference on
Conference_Location :
Stockholm
DOI :
10.1109/ICPR.2014.135