We develop a novel framework to accelerate Gaussian process regression (GPR). In particular, we consider localization kernels at each data point to down-weigh the contributions from other data points that are far away, and we derive the GPR model stemming from the application of such localization operation. Through a set of experiments, we demonstrate the competitive performance of the proposed approach compared to full GPR, other localized models, and deep Gaussian processes. Crucially, these performances are obtained with considerable speedups compared to standard global GPR due to the sparsification effect of the Gram matrix induced by the localization operation.
Locally smoothed Gaussian process regression
KES 2022, 26th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems, 7-9 September 2022, Verona, Italy / Also published in Procedia Computer Science, Vol. 207
      
  Type:
        Conférence
      City:
        Verona
      Date:
        2022-09-07
      Department:
        Data Science
      Eurecom Ref:
        7009
      Copyright:
        © Elsevier. Personal use of this material is permitted. The definitive version of this paper was published in KES 2022, 26th International Conference on Knowledge-Based and Intelligent Information & Engineering Systems, 7-9 September 2022, Verona, Italy / Also published in Procedia Computer Science, Vol. 207 and is available at : https://doi.org/10.1016/j.procs.2022.09.330
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      PERMALINK : https://www.eurecom.fr/publication/7009