This chapter deals with kernel methods as a special class of techniques for surrogate modeling. Kernel methods have proven to be efficient in machine learning, pattern recognition and signal analysis due to their flexibility, excellent experimental performance and elegant functional analytic background. These data-based techniques provide so called kernel expansions, i.e., linear combinations of kernel functions which are generated from given input-output point samples that may be arbitrarily scattered. In particular, these techniques are meshless, do not require or depend on a grid, hence are less prone to the curse of dimensionality, even for high-dimensional problems. In contrast to projection-based model reduction, we do not necessari...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
AbstractSurrogate modeling uses cheap “surrogates” to represent the response surface of simulation m...
This chapter deals with kernel methods as a special class of techniques for surrogate modeling. Kern...
This chapter deals with kernel methods as a special class of techniques for surrogate modeling. Kern...
In most science and engineering fields, numerical simulation models are often used to replicate phys...
This dissertation uses structured linear algebra to scale kernel regression methods based on Gaussia...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
Adaptive surrogate models are of practical use for reliability analysis based on costly-to-evaluate ...
Computer simulations are an invaluable tool for modeling and investigating real-world phenomena and ...
International audienceThis paper introduces algorithms to select/design kernels in Gaussian process ...
Greedy kernel approximation algorithms are successful techniques for sparse and accurate data-based ...
Surrogate models for computational simulations are inexpensive input-output approx-imations that all...
Kernel methods have become very popular in machine learning research and many fields of applications...
Greedy kernel approximation algorithms are successful techniques for sparse and accurate data-based ...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
AbstractSurrogate modeling uses cheap “surrogates” to represent the response surface of simulation m...
This chapter deals with kernel methods as a special class of techniques for surrogate modeling. Kern...
This chapter deals with kernel methods as a special class of techniques for surrogate modeling. Kern...
In most science and engineering fields, numerical simulation models are often used to replicate phys...
This dissertation uses structured linear algebra to scale kernel regression methods based on Gaussia...
© Springer-Verlag Berlin Heidelberg 2015. This chapter addresses the study of kernel methods, a clas...
Adaptive surrogate models are of practical use for reliability analysis based on costly-to-evaluate ...
Computer simulations are an invaluable tool for modeling and investigating real-world phenomena and ...
International audienceThis paper introduces algorithms to select/design kernels in Gaussian process ...
Greedy kernel approximation algorithms are successful techniques for sparse and accurate data-based ...
Surrogate models for computational simulations are inexpensive input-output approx-imations that all...
Kernel methods have become very popular in machine learning research and many fields of applications...
Greedy kernel approximation algorithms are successful techniques for sparse and accurate data-based ...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
International audienceThis chapter introduces a powerful class of machine learning approaches called...
AbstractSurrogate modeling uses cheap “surrogates” to represent the response surface of simulation m...