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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Scaling Multidimensional Inference for Structured Gaussian Processes
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Scaling Multidimensional Inference for Structured Gaussian Processes

机译:结构化高斯过程的尺度多维推理

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摘要

Exact Gaussian process (GP) regression has runtime for data size , making it intractable for large . Many algorithms for improving GP scaling approximate the covariance with lower rank matrices. Other work has exploited structure inherent in particular covariance functions, including GPs with implied Markov structure, and inputs on a lattice (both enable or runtime). However, these GP advances have not been well extended to the multidimensional input setting, despite the preponderance of multidimensional applications. This paper introduces and tests three novel extensions of structured GPs to multidimensional inputs, for models with additive and multiplicative kernels. First we present a new method for inference in additive GPs, showing a novel connection between the classic backfitting method and the Bayesian framework. We extend this model using two advances: a variant of projection pursuit regression, and a Laplace approximation for non-Gaussian observations. Lastly, for multiplicative kernel structure, we present a novel method for GPs with inputs on a multidimensional grid. We illustrate the power of these three advances on several data sets, achieving performance equal to or very close to the naive GP at orders of magnitude less cost.
机译:精确的高斯过程(GP)回归具有数据大小的运行时,因此对于大型来说很难处理。许多用于改善GP缩放比例的算法都可以通过较低等级的矩阵来估计协方差。其他工作还利用了特定协方差函数固有的结构,包括具有隐马尔可夫结构的GP,以及晶格上的输入(启用或运行时)。但是,尽管有许多多维应用程序,但这些GP的进步还没有很好地扩展到多维输入设置。本文针对具有加性和乘性内核的模型,介绍并测试了结构化GP对多维输入的三种新颖扩展。首先,我们介绍了一种在加法GP中进行推理的新方法,展示了经典的后拟合方法与贝叶斯框架之间的新颖联系。我们使用两个方面来扩展此模型:投影追踪回归的变体,以及非高斯观测的拉普拉斯近似。最后,对于乘法核结构,我们提出了一种在多维网格上输入的GP的新颖方法。我们在多个数据集上说明了这三项技术的强大功能,它们以更少的数量级成本实现了与原始GP相当或非常接近的性能。

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