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Localizing and Amortizing Efficient Inference for Gaussian Processes

机译:本地化和摊销高斯过程的高效推论

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The inference of Gaussian Processes concerns the distribution of the underlying function given observed data points. GP inference based on local ranges of data points is able to capture fine-scale correlations and allow fine-grained decomposition of the computation. Following this direction, we propose a new inference model that considers the correlations and observations of the K nearest neighbors for the inference at a data point. Compared with previous works, we also eliminate the data ordering prerequisite to simplify the inference process. Additionally, the inference task is decomposed to small subtasks with several technique innovations, making our model well suits the stochastic optimization. Since the decomposed small subtasks have the same structure, we further speed up the inference procedure with amortized inference. Our model runs efficiently and achieves good performances on several benchmark tasks.
机译:高斯工艺的推断涉及给出观察到的数据点的底层功能的分布。基于局部数据点的GP推断能够捕获微量尺度相关性并允许计算的细粒度分解。在此方向之后,我们提出了一种新的推理模型,其考虑了K最近邻居对数据点推断的相关性和观察。与以前的作品相比,我们还消除了数据订购先决条件以简化推理过程。此外,推理任务是用几种技术创新的小型子组织分解,使我们的模型适合随机优化。由于分解的小型子任务具有相同的结构,因此我们进一步加速了摊销推理的推理过程。我们的模型有效运行并在几个基准任务上实现了良好的表现。

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