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Scalable Nonparametric Bayesian Inference on Point Processes with Gaussian Processes

机译:可扩展的非参数贝叶斯推断与高斯过程的点流程

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In this paper we propose an efficient, scalable non-parametric Gaussian process model for inference on Poisson point processes. Our model does not resort to gridding the domain or to introducing latent thinning points. Unlike competing models that scale as O(n~3) over n data points, our model has a complexity O(nk~2) where k n. We propose a MCMC sampler and show that the model obtained is faster, more accurate and generates less correlated samples than competing approaches on both synthetic and real-life data. Finally, we show that our model easily handles data sizes not considered thus far by alternate approaches.
机译:在本文中,我们提出了一种有效,可扩展的非参数高斯过程模型,用于泊松点过程的推断。我们的型号并不诉诸于网格格栅或引入潜在的变薄点。与竞争模型不同,将其作为o(n〜3)在n个数据点上,我们的模型具有复杂性O(nk〜2),其中k n。我们提出了一个MCMC采样器,并表明所获得的模型更快,更准确,并且比合成和现实生活数据的竞争方法更少,并且产生更少的相关样本。最后,我们显示我们的模型通过替代方法轻松处理未考虑的数据尺寸。

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