Title :
LDA/SVM driven nearest neighbor classification
Author :
Peng, Jing ; Heisterkamp, Douglas R. ; Dai, H.K.
Author_Institution :
Dept. of Electr. Eng. & Comput. Sci., Tulane Univ., New Orleans, LA, USA
Abstract :
Nearest neighbor classification relies on the assumption that class conditional probabilities are locally constant. This assumption becomes false in high dimensions with finite samples due to the curse of dimensionality. The nearest neighbor rule introduces severe bias under these conditions. We propose a locally adaptive neighborhood morphing classification method to try to minimize bias. We use local support vector machine teaming to estimate an effective metric for producing neighborhoods that are elongated along less discriminant feature dimensions and constricted along most discriminant ones. As a result, the class conditional probabilities can be expected to be approximately constant in the modified neighborhoods, whereby better classification performance can be achieved. The efficacy of our method is validated and compared against other competing techniques using a number of data sets.
Keywords :
learning automata; pattern classification; local support vector machine learning; locally adaptive; nearest neighbor classification; nearest neighbor rule; neighborhood morphing classification; Computer science; Error analysis; Euclidean distance; Linear discriminant analysis; Machine learning; Nearest neighbor searches; Neural networks; Robustness; Support vector machine classification; Support vector machines;
Conference_Titel :
Computer Vision and Pattern Recognition, 2001. CVPR 2001. Proceedings of the 2001 IEEE Computer Society Conference on
Print_ISBN :
0-7695-1272-0
DOI :
10.1109/CVPR.2001.990456