鲁棒在线学习的信息核算法

Haijin Fan, Q. Song, Zhao Xu
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引用次数: 2

摘要

核方法在非线性建模中有着广泛的应用。本文提出了一种用于在线学习的鲁棒信息理论稀疏核算法。为了降低计算成本并使算法适合在线应用,我们研究了一种基于系统输入和输出之间互信息的信息论稀疏规则来确定字典(支持向量)的更新。根据该规则,只选择新颖且信息丰富的样本来组成一个稀疏紧凑的字典。为了提高泛化能力,提出了一种鲁棒学习方案,避免了算法对冗余样本的过度学习,保证了学习算法的收敛性,使学习算法更快地收敛到稳态。在实际数据和仿真数据上进行了实验,结果验证了所提算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An information theoretic kernel algorithm for robust online learning
Kernel methods are widely used in nonlinear modeling applications. In this paper, a robust information theoretic sparse kernel algorithm is proposed for online learning. In order to reduce the computational cost and make the algorithm suitable for online applications, we investigate an information theoretic sparsification rule based on the mutual information between the system input and output to determine the update of the dictionary (support vectors). According to the rule, only novel and informative samples are selected to form a sparse and compact dictionary. Furthermore, to improve the generalization ability, a robust learning scheme is proposed to avoid the algorithm over learning the redundant samples, which assures the convergence of the learning algorithm and makes the learning algorithm converge to its steady state much faster. Experiment are conducted on practical and simulated data and results are shown to validate the effectiveness of our proposed algorithm.
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