Title :
The Generalization Ability of SVM Classification Based on Markov Sampling
Author :
Jie Xu ; Yuan Yan Tang ; Bin Zou ; Zongben Xu ; Luoqing Li ; Yang Lu ; Baochang Zhang
Author_Institution :
Fac. of Comput. Sci. & Inf. Eng., Hubei Univ., Wuhan, China
Abstract :
The previously known works studying the generalization ability of support vector machine classification (SVMC) algorithm are usually based on the assumption of independent and identically distributed samples. In this paper, we go far beyond this classical framework by studying the generalization ability of SVMC based on uniformly ergodic Markov chain (u.e.M.c.) samples. We analyze the excess misclassification error of SVMC based on u.e.M.c. samples, and obtain the optimal learning rate of SVMC for u.e.M.c. samples. We also introduce a new Markov sampling algorithm for SVMC to generate u.e.M.c. samples from given dataset, and present the numerical studies on the learning performance of SVMC based on Markov sampling for benchmark datasets. The numerical studies show that the SVMC based on Markov sampling not only has better generalization ability as the number of training samples are bigger, but also the classifiers based on Markov sampling are sparsity when the size of dataset is bigger with regard to the input dimension.
Keywords :
Markov processes; generalisation (artificial intelligence); pattern classification; sampling methods; support vector machines; Markov sampling algorithm; SVMC algorithm; UEMC samples; generalization ability; misclassification error; optimal learning rate; support vector machine; support vector machine classification; training samples; uniformly ergodic Markov chain; Cybernetics; Educational institutions; Kernel; Markov processes; Q measurement; Random variables; Support vector machines; Generalization ability; Markov sampling; learning rate; support vector machine classification (SVMC);
Journal_Title :
Cybernetics, IEEE Transactions on
DOI :
10.1109/TCYB.2014.2346536