Title :
Low-Density Cut Based Tree Decomposition for Large-Scale SVM Problems
Author :
Lifang He ; Hong-Han Shuai ; Xiangnan Kong ; Zhifeng Hao ; Xiaowei Yang ; Yu, Philip S.
Author_Institution :
Fac. of Comput., Guangdong Univ. of Technol., Guangzhou, China
Abstract :
The current trend of growth of information reveals that it is inevitable that large-scale learning problems become the norm. In this paper, we propose and analyze a novel Low-density Cut based tree Decomposition method for large-scale SVM problems, called LCD-SVM. The basic idea here is divide and conquer: use a decision tree to decompose the data space and train SVMs on the decomposed regions. Specifically, we demonstrate the application of low density separation principle to devise a splitting criterion for rapidly generating a high-quality tree, thus maximizing the benefits of SVMs training. Extensive experiments on 14 real-world datasets show that our approach can provide a significant improvement in training time over state-of-the-art methods while keeps comparable test accuracy with other methods, especially for very large-scale datasets.
Keywords :
decision trees; learning (artificial intelligence); pattern classification; support vector machines; LCD-SVM; SVM problems; SVM training; data space decomposition; decision tree; large-scale learning problems; low density separation principle; low-density cut based tree decomposition; splitting criterion; Accuracy; Computational complexity; Decision trees; Educational institutions; Histograms; Support vector machines; Training; Support vector machines; decision tree; large scale; splitting criterion;
Conference_Titel :
Data Mining (ICDM), 2014 IEEE International Conference on
Conference_Location :
Shenzhen
Print_ISBN :
978-1-4799-4303-6
DOI :
10.1109/ICDM.2014.127