Title :
Multiclass linear dimension reduction via a generalized Chernoff bound
Author :
Thangavelu, Madan ; Raich, Raviv
Author_Institution :
Sch. of Electr. Eng. & Comput. Sci., Oregon State Univ., Corvallis, OR
Abstract :
In this paper, we consider the problem of linear dimension reduction (LDR) for multiclass classification. Often, a linear projection in which classes are separable may exist, but is hard to find. In the absence of methods that can find such plane, one may unnecessarily resort to nonlinear dimension reduction (DR). Generalization of two-class separation criteria such as Mahalanobis, Bhattacharya, or Chernoff distance are often done in an ad-hoc fashion. In this paper, we propose two algorithms for multiclass LDR that aim at minimizing upper bounds on the probability of misclassification and are based on generalizations of Chernoff distance for the multiclass problem. We present a numerical study and comparison to state-of-the-art LDR methods on datasets from the UCI machine learning repository. We show that our algorithms result in lower classification error rates compared to techniques of the same class.
Keywords :
data analysis; learning (artificial intelligence); UCI machine learning repository; generalized Chernoff bound; multiclass classification; multiclass linear dimension reduction; nonlinear dimension reduction; Computer science; Error analysis; Error probability; Hyperspectral imaging; Information analysis; Internet; Machine learning; Machine learning algorithms; Principal component analysis; Upper bound;
Conference_Titel :
Machine Learning for Signal Processing, 2008. MLSP 2008. IEEE Workshop on
Conference_Location :
Cancun
Print_ISBN :
978-1-4244-2375-0
Electronic_ISBN :
1551-2541
DOI :
10.1109/MLSP.2008.4685505