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Regression on the basis of nonstationary Gaussian processes with Bayesian regularization

机译:基于具有贝叶斯正则化的非平稳高斯过程的回归

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摘要

We consider the regression problem, i.e. prediction of a real valued function. A Gaussian process prior is imposed on the function, and is combined with the training data to obtain predictions for new points. We introduce a Bayesian regularization on parameters of a covariance function of the process, which increases quality of approximation and robustness of the estimation. Also an approach to modeling nonstationary covariance function of a Gaussian process on basis of linear expansion in parametric functional dictionary is proposed. Introducing such a covariance function allows to model functions, which have non-homogeneous behaviour. Combining above features with careful optimization of covariance function parameters results in unified approach, which can be easily implemented and applied. The resulting algorithm is an out of the box solution to regression problems, with no need to tune parameters manually. The effectiveness of the method is demonstrated on various datasets.
机译:我们考虑了回归问题,即对实值函数的预测。高斯过程先验加在函数上,并与训练数据结合以获得对新点的预测。我们在过程协方差函数的参数上引入贝叶斯正则化,从而提高了近似的质量和估计的鲁棒性。还提出了一种基于参数函数字典中线性展开的高斯过程的非平稳协方差函数建模方法。引入这样的协方差函数可以对具有非均匀行为的函数进行建模。将以上特征与对协方差函数参数的仔细优化相结合,可以得到统一的方法,可以轻松实现和应用。生成的算法是解决回归问题的即用型解决方案,无需手动调整参数。在各种数据集上证明了该方法的有效性。

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