Approximation of high-dimensional functions is a problem in many scientific fields that is only feasible if advantageous structural properties, such as sparsity in a given basis, can be exploited. A relevant tool for analysing sparse approximations is Stechkin's lemma. In its standard form, however, this lemma does not allow to explain convergence rates for a wide range of relevant function classes. This work presents a new weighted version of Stechkin's lemma that improves the best $n$-term rates for weighted $\ell^p$-spaces and associated function classes such as Sobolev or Besov spaces. For the class of holomorphic functions, which occur as solutions of common high-dimensional parameter-dependent PDEs, we recover exponential rates that...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Recent work by Rauhut and Ward developed a notion of weighted sparsity and a corresponding notion of...
textSparse approximation problems request a good approximation of an input signal as a linear combi...
For part I see arXiv:2007.00118We study the approximation by tensor networks (TNs) of functions from...
A recurring theme in attempts to break the curse of dimensionality in the numerical approximations o...
Abstract. A recurring theme in attempts to break the curse of dimensionality in the numerical approx...
A recurring theme in attempts to break the curse of dimensionality in the numerical approximation of...
Abstract. A recurring theme in attempts to break the curse of dimensionality in the numerical approx...
Two approximation algorithms are proposed for $\ell_1$-regularized sparse rank-1 approximation to hi...
For linear models, compressed sensing theory and methods enable recovery of sparse signals of intere...
For part II see arXiv:2007.00128We study the approximation of functions by tensor networks (TNs). We...
Sparse tensor best rank-1 approximation (BR1Approx), which is a sparsity generalization of the dense...
Sparse modeling is a rapidly developing topic that arises frequently in areas such as machine learni...
In the present paper, we consider the construction of general sparse tensor product spaces in arbitr...
This work studies sparse reconstruction techniques for approximating solutions of high-dimensional p...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Recent work by Rauhut and Ward developed a notion of weighted sparsity and a corresponding notion of...
textSparse approximation problems request a good approximation of an input signal as a linear combi...
For part I see arXiv:2007.00118We study the approximation by tensor networks (TNs) of functions from...
A recurring theme in attempts to break the curse of dimensionality in the numerical approximations o...
Abstract. A recurring theme in attempts to break the curse of dimensionality in the numerical approx...
A recurring theme in attempts to break the curse of dimensionality in the numerical approximation of...
Abstract. A recurring theme in attempts to break the curse of dimensionality in the numerical approx...
Two approximation algorithms are proposed for $\ell_1$-regularized sparse rank-1 approximation to hi...
For linear models, compressed sensing theory and methods enable recovery of sparse signals of intere...
For part II see arXiv:2007.00128We study the approximation of functions by tensor networks (TNs). We...
Sparse tensor best rank-1 approximation (BR1Approx), which is a sparsity generalization of the dense...
Sparse modeling is a rapidly developing topic that arises frequently in areas such as machine learni...
In the present paper, we consider the construction of general sparse tensor product spaces in arbitr...
This work studies sparse reconstruction techniques for approximating solutions of high-dimensional p...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
Recent work by Rauhut and Ward developed a notion of weighted sparsity and a corresponding notion of...
textSparse approximation problems request a good approximation of an input signal as a linear combi...