Title :
Comparison of
-Norm SVR and Sparse Coding Algorithms for Linear Regression
Author :
Qingtian Zhang ; Xiaolin Hu ; Bo Zhang
Author_Institution :
Dept. of Comput. Sci. & Technol., Tsinghua Univ., Beijing, China
Abstract :
Support vector regression (SVR) is a popular function estimation technique based on Vapnik´s concept of support vector machine. Among many variants, the l1-norm SVR is known to be good at selecting useful features when the features are redundant. Sparse coding (SC) is a technique widely used in many areas and a number of efficient algorithms are available. Both l1-norm SVR and SC can be used for linear regression. In this brief, the close connection between the l1-norm SVR and SC is revealed and some typical algorithms are compared for linear regression. The results show that the SC algorithms outperform the Newton linear programming algorithm, an efficient l1-norm SVR algorithm, in efficiency. The algorithms are then used to design the radial basis function (RBF) neural networks. Experiments on some benchmark data sets demonstrate the high efficiency of the SC algorithms. In particular, one of the SC algorithms, the orthogonal matching pursuit is two orders of magnitude faster than a well-known RBF network designing algorithm, the orthogonal least squares algorithm.
Keywords :
Newton method; linear programming; radial basis function networks; regression analysis; support vector machines; Newton linear programming algorithm; RBF neural network designing algorithm; SC algorithms; Vapnik concept; function estimation technique; l1-norm SVR algorithm; linear regression; orthogonal least squares algorithm; orthogonal matching pursuit; radial basis function neural networks; sparse coding algorithms; support vector machine; support vector regression; Algorithm design and analysis; Frequency selective surfaces; Matching pursuit algorithms; Support vector machines; Testing; Training; Vectors; Newton linear programming (NLP); radial basis function (RBF) neural network; regression; sparse coding (SC); support vector machine (SVM); support vector machine (SVM).;
Journal_Title :
Neural Networks and Learning Systems, IEEE Transactions on
DOI :
10.1109/TNNLS.2014.2377245