2015 International Conference on Estimation, Detection and Information Fusion (ICEDIF) 2015
DOI: 10.1109/icedif.2015.7280178
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Parameter optimization of SVR based on DRVB-ASCKF

Abstract: 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… Show more

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