Modeling a response over a non-convex design region is a common problem in diverse areas such as engineering and geophysics. Unfortunately, the tools available to model and design for such responses are limited. Recently, some success has been found by applying the Gaussian Process (GP) model with the so-called water distance metric. However, a difficulty is that transformation of the water distances is required to be able to model a GP over such regions. The specific questions of exactly how to make this transformation, select design points and fit GP models have received little attention. In this thesi s, we build on existing results to propose a valid transformation. A new method for selecting design points with the GP model over non-con...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
ii Modeling a response over a non-convex design region is a common problem in diverse areas such as ...
<p>Modeling a response over a nonconvex design region is a common problem in diverse areas such as e...
The main objective of the paper is to describe and develop model oriented methods and algorithms for...
Computer experiments are increasingly being used to build high-quality surrogate models for complex ...
Optimal design facilitates intelligent data collection. In this paper, we introduce a fully Bayesian...
An iterative Bayesian optimisation technique is presented to find spatial designs of data that carry...
<div><p>For deterministic computer simulations, Gaussian process models are a standard procedure for...
A good experimental design in a non-parametric framework, such as Gaussian process modelling in comp...
Recent implementations of local approximate Gaussian process models have pushed computational bounda...
International audienceIn the context of expensive deterministic simulations, Gaussian process(GP) mo...
A major component of inference in spatial statistics is that of spatial prediction of an unknown val...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...
ii Modeling a response over a non-convex design region is a common problem in diverse areas such as ...
<p>Modeling a response over a nonconvex design region is a common problem in diverse areas such as e...
The main objective of the paper is to describe and develop model oriented methods and algorithms for...
Computer experiments are increasingly being used to build high-quality surrogate models for complex ...
Optimal design facilitates intelligent data collection. In this paper, we introduce a fully Bayesian...
An iterative Bayesian optimisation technique is presented to find spatial designs of data that carry...
<div><p>For deterministic computer simulations, Gaussian process models are a standard procedure for...
A good experimental design in a non-parametric framework, such as Gaussian process modelling in comp...
Recent implementations of local approximate Gaussian process models have pushed computational bounda...
International audienceIn the context of expensive deterministic simulations, Gaussian process(GP) mo...
A major component of inference in spatial statistics is that of spatial prediction of an unknown val...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
When monitoring spatial phenomena, such as the ecological condition of a river, deciding where to ma...
This paper describes the use of model-based geostatistics for choosing the optimal set of sampling l...