基于拟线性核SVR的非线性系统辨识

Y. Cheng, Jinglu Hu
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引用次数: 8

摘要

近年来,支持向量回归(SVR)在非线性系统辨识中受到广泛关注。它可以在线性变换的空间内以线性表达式的形式求解非线性问题。通常采用方便的核函数技巧,用正定核函数代替内积,得到隐式非线性映射。然而,只有有限数量的内核函数可以很好地用于实际应用程序。此外,隐式非线性核映射并不总是好的,因为它可能面临一些复杂和有噪声的学习任务的潜在过拟合。本文利用拟arx模型学习了显式非线性映射,并将相应的内积核称为拟线性核,在线性核函数和非线性核函数之间具有非线性可调性。通过数值和实际系统仿真,验证了拟线性核的有效性,并将该方法应用于芯片缺失值的输入问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonlinear system identification based on SVR with quasi-linear kernel
In recent years, support vector regression (SVR) has attracted much attention for nonlinear system identification. It can solve nonlinear problems in the form of linear expressions within the linearly transformed space. Commonly, the convenient kernel trick is applied, which leads to implicit nonlinear mapping by replacing the inner product with a positive definite kernel function. However, only a limited number of kernel functions have been found to work well for the real applications. Moreover, it has been pointed that the implicit nonlinear kernel mapping is not always good, since it may faces the potential over-fitting for some complex and noised learning task. In this paper, explicit nonlinear mapping is learnt by means of the quasi-ARX modeling, and the associated inner product kernel, which is named quasi-linear kernel, is formulated with nonlinearity tunable between the linear and nonlinear kernel functions. Numerical and real systems are simulated to show effectiveness of the quasi-linear kernel, and the proposed identification method is also applied to microarray missing value imputation problem.
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