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MAP-based estimation of the parameters of non-stationary Gaussian processes from noisy observations

机译:基于MAP的非平稳高斯过程参数估计

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The paper proposes a modification of the standard maximum a posteriori (MAP) method for the estimation of the parameters of a Gaussian process for cases where the process is superposed by additive Gaussian observation errors of known variance. Simulations on artificially generated data demonstrate the superiority of the proposed method. While reducing to the ordinary MAP approach in the absence of observation noise, the improvement becomes the more pronounced the larger the variance of the observation noise. The method is further extended to track the parameters in case of non-stationary Gaussian processes.
机译:本文提出了一种标准最大后验(MAP)方法的修改方法,用于估计高斯过程的参数,该过程由已知方差的加性高斯观测误差叠加而成。对人工生成的数据进行的仿真证明了该方法的优越性。在不存在观察噪声的情况下减少到普通MAP方法的同时,观察噪声的方差越大,改进越明显。该方法进一步扩展为在非平稳高斯过程的情况下跟踪参数。

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