DocumentCode
734226
Title
A Low Rank Gaussian Process Prediction Model for Very Large Datasets
Author
Rivera, Roberto
fYear
2015
fDate
March 30 2015-April 2 2015
Firstpage
308
Lastpage
313
Abstract
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 process. However, Fixed Rank Kriging requires the estimation of a matrix which must be positive definite and the original estimation procedure cannot guarantee this property. We present a result that shows when a matrix subtraction of a given form will give a positive definite matrix. Motivated by this result, we propose an iterative Fixed Rank Kriging algorithm that ensures positive definiteness of the matrix required for prediction and show that under mild conditions the algorithm numerically converges. The new Fixed Rank Kriging procedure is implemented to predict missing chlorophyll observations for very large regions of ocean color. Predictions are compared to those made by other well known methods of spatial prediction.
Keywords
Gaussian processes; covariance matrices; iterative methods; chlorophyll observations; covariance matrix estimation; iterative fixed rank kriging algorithm; low rank Gaussian process prediction model; matrix subtraction; ocean color; positive definite matrix; spatial prediction methods; very large datasets; very large spatial data; Covariance matrices; Eigenvalues and eigenfunctions; Gaussian processes; Mathematical model; Oceans; Predictive models; Symmetric matrices; Gaussian processes; low rank representation; mean squared prediction error; ocean color; prediction; remote sensing; very large datasets;
fLanguage
English
Publisher
ieee
Conference_Titel
Big Data Computing Service and Applications (BigDataService), 2015 IEEE First International Conference on
Conference_Location
Redwood City, CA
Type
conf
DOI
10.1109/BigDataService.2015.22
Filename
7184895
Link To Document