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A Marginalized Particle Gaussian Process Regression

机译:边际粒子高斯过程回归

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We present a novel marginalized particle Gaussian process (MPGP) regression, which provides a fast, accurate online Bayesian filtering framework to model the latent function. Using a state space model established by the data construction procedure, our MPGP recursively filters out the estimation of hidden function values by a Gaussian mixture. Meanwhile, it provides a new online method for training hyperparameters with a number of weighted particles. We demonstrate the estimated performance of our MPGP on both simulated and real large data sets. The results show that our MPGP is a robust estimation algorithm with high computational efficiency, which outperforms other state-of-art sparse GP methods.
机译:我们提出了一种新颖的边缘化粒子高斯过程(MPGP)回归,它提供了一种快速,准确的在线贝叶斯滤波框架来对潜在函数进行建模。使用由数据构造过程建立的状态空间模型,我们的MPGP递归地过滤出由高斯混合估计的隐藏函数值。同时,它提供了一种新的在线方法来训练带有多个加权粒子的超参数。我们演示了MPGP在模拟和真实大数据集上的估计性能。结果表明,我们的MPGP是一种鲁棒的估计算法,具有较高的计算效率,其性能优于其他最新的稀疏GP方法。

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