Title of article :
Classification by ALH-Fast Algorithm
Author/Authors :
Yang, Tao University of Technology Sydney - Faculty of Engineering and Information Technology, Australia , Kecmar, Vojislav Virginia Commonwealth University (VCU) - Department of Computer Science, USA , Cao, Longbing University of Technology Sydney - Faculty of Engineering and Information Technology, Australia
Abstract :
The adaptive local hyperplane (ALH) algorithm is a very recently proposed classifier, which has been shown to perform better than many other benchmarking classifiers including support vector machine (SVM), K-nearest neighbor (KNN), linear discriminant analysis (LDA), and K-local hyperplane distance nearest neighbor (HKNN) algorithms. Although the ALH algorithm is well formulated and despite the fact that it performs well in practice, its scalability over a very large data set is limited due to the online distance computations associated with all training instances. In this paper, a novel algorithm, called ALH-Fast and obtainedby combining the classification tree algorithm and the ALH, is proposed to reduce the computationalload of the ALH algorithm. The experiment results on two large data sets show that the ALH-Fast algorithm is both much faster and more accurate than the ALH algorithm.
Keywords :
classification , adaptive local hyperplane (ALH) , decision tree
Journal title :
Tsinghua Science and Technology
Journal title :
Tsinghua Science and Technology