Ingram, B (Ingram, Ben). Univ Talca, Fac Ingn, Curico, ChileHeterogeneous datasets arise naturally in most applications due to the use of a variety of sensors and measuring platforms. Such datasets can be heterogeneous in terms of the error characteristics and sensor models. Treating such data is most naturally accomplished using a Bayesian or model-based geostatistical approach: however, such methods generally scale rather badly with the size of dataset, and require computationally expensive Monte Carlo based inference. Recently within the machine learning and spatial statistics communities many papers have explored the potential of reduced rank representations of the covariance matrix, often referred to as projected or fixed rank approach...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
With continued advances in Geographic Information Systems and related computational technologies, re...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
Heterogeneous data sets arise naturally in most applications due to the use of a variety of sensors,...
Recently within the machine learning and spatial statistics communities many papers have explored th...
The principled statistical application of Gaussian random field models used in geostatistics has his...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
Spatial process models for analyzing geostatistical data entail computations that become prohibitive...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
Gaussian Process (GP) models provide a very flexible nonparametric approach to modeling location-and...
18 pagesWe present a computationally-efficient strategy to find the hyperparameters of a Gaussian pr...
<p>Spatial process models for analyzing geostatistical data entail computations that become prohibit...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
With continued advances in Geographic Information Systems and related computational technologies, re...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
Heterogeneous data sets arise naturally in most applications due to the use of a variety of sensors,...
Recently within the machine learning and spatial statistics communities many papers have explored th...
The principled statistical application of Gaussian random field models used in geostatistics has his...
We develop a family of Bayesian algorithms built around Gaussian processes for various problems pose...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
Spatial process models for analyzing geostatistical data entail computations that become prohibitive...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
Gaussian processes are a powerful and flexible class of nonparametric models that use covariance fun...
Computational efficiency is at the forefront of many cutting edge spatial modeling techniques. Non-s...
Gaussian Process (GP) models provide a very flexible nonparametric approach to modeling location-and...
18 pagesWe present a computationally-efficient strategy to find the hyperparameters of a Gaussian pr...
<p>Spatial process models for analyzing geostatistical data entail computations that become prohibit...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...
With continued advances in Geographic Information Systems and related computational technologies, re...
We introduce a new sequential algorithm for making robust predictions in the presence of changepoint...