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Robust Regression with Twinned Gaussian Processes

机译:孪生高斯过程的鲁棒回归

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We propose a Gaussian process (GP) framework for robust inference in which a GP prior on the mixing weights of a two-component noise model augments the standard process over latent function values. This approach is a generalization of the mixture likelihood used in traditional robust GP regression, and a specialization of the GP mixture models suggested by Tresp [1] and Rasmussen and Ghahra-mani [2]. The value of this restriction is in its tractable expectation propagation updates, which allow for faster inference and model selection, and better convergence than the standard mixture. An additional benefit over the latter method lies in our ability to incorporate knowledge of the noise domain to influence predictions, and to recover with the predictive distribution information about the outlier distribution via the gating process. The model has asymptotic complexity equal to that of conventional robust methods, but yields more confident predictions on benchmark problems than classical heavy-tailed models and exhibits improved stability for data with clustered corruptions, for which they fail altogether. We show further how our approach can be used without adjustment for more smoothly heteroscedastic data, and suggest how it could be extended to more general noise models. We also address similarities with the work of Goldberg et al. [3].
机译:我们提出了一种用于稳健推断的高斯过程(GP)框架,其中,基于两分量噪声模型的混合权重的GP优先于潜在函数值而增加了标准过程。这种方法是对传统鲁棒GP回归中使用的混合可能性的概括,以及Tresp [1]和Rasmussen和Ghahra-mani [2]建议的GP混合模型的特殊化。此限制的价值在于其易于处理的预期传播更新,与标准混合方法相比,它可以更快地进行推断和模型选择,并具有更好的收敛性。相对于后一种方法的另一个好处在于,我们能够结合噪声域的知识来影响预测,并能够通过选通过程利用有关异常值分布的预测分布信息进行恢复。该模型的渐进复杂度与传统的鲁棒方法相同,但是与经典的重尾模型相比,它对基准问题的预测更有把握,并且对于带有聚类损坏的数据表现出更高的稳定性,而对于这些数据,它们完全失败了。我们进一步展示了如何在不进行调整的情况下使用我们的方法来更平稳地处理异方差数据,并建议如何将其扩展到更通用的噪声模型。我们还讨论了与Goldberg等人的工作的相似之处。 [3]。

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