For low-dimensional data sets with a large amount of data points, standard kernel methods are usually not feasible for regression anymore. Besides simple linear models or involved heuristic deep learning models, grid-based discretizations of larger (kernel) model classes lead to algorithms, which naturally scale linearly in the amount of data points. For moderate-dimensional or high-dimensional regression tasks, these grid-based discretizations suffer from the curse of dimensionality. Here, sparse grid methods have proven to circumvent this problem to a large extent. In this context, space- and dimension-adaptive sparse grids, which can detect and exploit a given low effective dimensionality of nominally high-dimensional data, are particula...
A novel technique is proposed to construct sparse regression models based on the orthogonal least sq...
Sparse grids, combined with gradient penalties provide an attractive tool for regularised least squa...
The technique of sparse grids allows to overcome the curse of dimensionality, which prevents the use...
We present a dimension adaptive sparse grid combination technique for the machine learning problem o...
We introduce a dimension adaptive sparse grid combination technique for the machine learning problem...
Generative dimensionality reduction methods play an important role in machine learning applications ...
Sparse grids, as studied by Zenger and Griebel in the last 10 years have been very successful in the...
Sparse grids, combined with gradient penalties provide an attractive tool for regularised least squa...
Sparse grids have become an important tool to reduce the number of degrees of freedom of discretizat...
AbstractSparse grids allow one to employ grid-based discretization methods in data-driven problems. ...
We propose a new sparse model construction method aimed at maximizing a model’s generalisation capab...
International audienceWe propose and analyse a reduced-rank method for solving least-squares regress...
Summary. In this paper we present a locally and dimension-adaptive sparse grid method for interpolat...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
While sparse grid least squares regression algorithms have been frequently used to tackle Big Data p...
A novel technique is proposed to construct sparse regression models based on the orthogonal least sq...
Sparse grids, combined with gradient penalties provide an attractive tool for regularised least squa...
The technique of sparse grids allows to overcome the curse of dimensionality, which prevents the use...
We present a dimension adaptive sparse grid combination technique for the machine learning problem o...
We introduce a dimension adaptive sparse grid combination technique for the machine learning problem...
Generative dimensionality reduction methods play an important role in machine learning applications ...
Sparse grids, as studied by Zenger and Griebel in the last 10 years have been very successful in the...
Sparse grids, combined with gradient penalties provide an attractive tool for regularised least squa...
Sparse grids have become an important tool to reduce the number of degrees of freedom of discretizat...
AbstractSparse grids allow one to employ grid-based discretization methods in data-driven problems. ...
We propose a new sparse model construction method aimed at maximizing a model’s generalisation capab...
International audienceWe propose and analyse a reduced-rank method for solving least-squares regress...
Summary. In this paper we present a locally and dimension-adaptive sparse grid method for interpolat...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
While sparse grid least squares regression algorithms have been frequently used to tackle Big Data p...
A novel technique is proposed to construct sparse regression models based on the orthogonal least sq...
Sparse grids, combined with gradient penalties provide an attractive tool for regularised least squa...
The technique of sparse grids allows to overcome the curse of dimensionality, which prevents the use...