基于DRVB-ASCKF的SVR参数优化

Hailun Wang, L. Meilei, Lu Zhang
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引用次数: 2

摘要

参数对支持向量回归(SVR)的性能起着重要的作用。为了解决SVR的参数优化问题,首先将参数优化问题转化为非线性系统状态估计问题,然后提出了一种基于对偶递归变分贝叶斯自适应平方立方卡尔曼滤波(DRVB-ASCKF)的新算法,并引入DRVB-ASCKF进行求解。考虑到卡尔曼滤波器的先验统计噪声不符合其实际行为导致卡尔曼滤波精度降低,该算法假设测量噪声方差和过程噪声方差事先未知,但两种方差之间的函数关系已知。该算法由两个迭代过程组成,内环采用过程噪声协方差估计评估测量噪声协方差,外环采用测量噪声协方差反馈估计评估过程噪声协方差。采用DRVB-ASCKF算法,在过程噪声和测量噪声未知的情况下,仍然可以得到精度较高的SVR参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Parameter optimization of SVR based on DRVB-ASCKF
The parameters plays an important role to the performance of support vector regression(SVR). In order to solve the problem of the Parameter optimization for SVR, first, we transform the problem of Parameter optimization into a problem of nonlinear system state estimation, then, we propose a novel algorithm based on Dual Recursive Variational Bayesian Adaptive Square-Cubature Kalman Filter (DRVB-ASCKF), and introduce DRVB-ASCKF to solve it. Considering that the prior statistics noise of a Kalman filter does not agree with its real behavior led to the decrease of the kalman filtering precision, this algorithm assumes that measurement noise variance and process noise variance are unknown in advance, but the function relations between the two kinds of variance are known. This algorithm consists of two iterative processes, during the inner loop using the process noise covariance estimate evaluate measurement noise covariance, and the outer loop using the measurement noise covariance feedback estimate evaluate process noise covariance. Using the DRVB-ASCKF algorithm, we still can get a higher accuracy parameter of SVR when process noise and measurement noise are unknown.
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