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GoGP: Fast Online Regression with Gaussian Processes

机译:GoGP:使用高斯过程进行快速在线回归

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One of the most current challenging problems in Gaussian process regression (GPR) is to handle large-scale datasets and to accommodate an online learning setting where data arrive irregularly on the fly. In this paper, we introduce a novel online Gaussian process model that could scale with massive datasets. Our approach is formulated based on alternative representation of the Gaussian process under geometric and optimization views, hence termed geometric-based online GP (GoGP). We developed theory to guarantee that with a good convergence rate our proposed algorithm always produces a (sparse) solution which is close to the true optima to any arbitrary level of approximation accuracy specified a priori. Furthermore, our method is proven to scale seamlessly not only with large-scale datasets, but also to adapt accurately with streaming data. We extensively evaluated our proposed model against state-of-the-art baselines using several large-scale datasets for online regression task. The experimental results show that our GoGP delivered comparable, or slightly better, predictive performance while achieving a magnitude of computational speedup compared with its rivals under online setting. More importantly, its convergence behavior is guaranteed through our theoretical analysis, which is rapid and stable while achieving lower errors.
机译:高斯过程回归(GPR)中当前最具挑战性的问题之一是处理大规模数据集并适应在线学习环境,在这种情况下数据会不定期地动态到达。在本文中,我们介绍了一种新颖的在线高斯过程模型,该模型可以随着海量数据集进行扩展。我们的方法是基于几何和优化视图下高斯过程的替代表示而制定的,因此被称为基于几何的在线GP(GoGP)。我们发展了理论,以保证我们的算法以良好的收敛速度总能产生一个(稀疏的)解,该解对于先验指定的任意近似精度都接近于真实的最优值。此外,事实证明,我们的方法不仅可以与大规模数据集进行无缝缩放,而且可以准确地适应流数据。我们使用最新的基线,使用几个大型数据集对在线回归任务广泛评估了我们提出的模型。实验结果表明,与在线环境下的竞争对手相比,我们的GoGP提供了可比的或稍好一些的预测性能,同时实现了计算速度的提升。更重要的是,通过我们的理论分析,可以保证其收敛行为,而这种快速和稳定的计算同时又降低了误差。

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