TY - JOUR
T1 - The generalization performance of regularized regression algorithms based on markov sampling
AU - Zou, Bin
AU - Tang, Yuan Yan
AU - Xu, Zongben
AU - Li, Luoqing
AU - Xu, Jie
AU - Lu, Yang
PY - 2014/9
Y1 - 2014/9
N2 - This paper considers the generalization ability of two regularized regression algorithms [least square regularized regression (LSRR) and support vector machine regression (SVMR)] based on non-independent and identically distributed (non-i.i.d.) samples. Different from the previously known works for non-i.i.d. samples, in this paper, we research the generalization bounds of two regularized regression algorithms based on uniformly ergodic Markov chain (u.e.M.c.) samples. Inspired by the idea from Markov chain Monto Carlo (MCMC) methods, we also introduce a new Markov sampling algorithm for regression to generate u.e.M.c. samples from a given dataset, and then, we present the numerical studies on the learning performance of LSRR and SVMR based on Markov sampling, respectively. The experimental results show that LSRR and SVMR based on Markov sampling can present obviously smaller mean square errors and smaller variances compared to random sampling.
AB - This paper considers the generalization ability of two regularized regression algorithms [least square regularized regression (LSRR) and support vector machine regression (SVMR)] based on non-independent and identically distributed (non-i.i.d.) samples. Different from the previously known works for non-i.i.d. samples, in this paper, we research the generalization bounds of two regularized regression algorithms based on uniformly ergodic Markov chain (u.e.M.c.) samples. Inspired by the idea from Markov chain Monto Carlo (MCMC) methods, we also introduce a new Markov sampling algorithm for regression to generate u.e.M.c. samples from a given dataset, and then, we present the numerical studies on the learning performance of LSRR and SVMR based on Markov sampling, respectively. The experimental results show that LSRR and SVMR based on Markov sampling can present obviously smaller mean square errors and smaller variances compared to random sampling.
KW - Generalization performance
KW - Markov sampling
KW - regularized regression algorithms
KW - uniformly ergodic Markov chain
UR - https://www.scopus.com/pages/publications/84906490650
U2 - 10.1109/TCYB.2013.2287191
DO - 10.1109/TCYB.2013.2287191
M3 - 文章
AN - SCOPUS:84906490650
SN - 2168-2267
VL - 44
SP - 1497
EP - 1507
JO - IEEE Transactions on Cybernetics
JF - IEEE Transactions on Cybernetics
IS - 9
M1 - 6650093
ER -