A Low Rank Gaussian Process Prediction Model for Very Large Datasets

  • Roberto Rivera
  • Published 2015 in
    2015 IEEE First International Conference on Big…


The Gaussian process prediction model requires expensive computation to invert the covariance matrix it depends on and also has considerable storage needs. A recent method for very large spatial data known as Fixed Rank Kriging allows for prediction when the Gaussian process prediction model cannot and is easily implemented with less assumptions about the… (More)
DOI: 10.1109/BigDataService.2015.22


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