AbstractWe study approximation of multivariate functions defined over Rd. We assume that all rth order partial derivatives of the functions considered are continuous and uniformly bounded. Approximation algorithms U(f) only use the values of f or its partial derivatives up to order r. We want to recover the function f with small error measured in a weighted Lq norm with a weight function ρ. We study the worst case (information) complexity which is equal to the minimal number of function and derivative evaluations needed to obtain error ε. We provide necessary and sufficient conditions in terms of the weight ρ and the parameters q and r for the weighted approximation problem to have finite complexity. We also provide conditions guaranteeing ...
AbstractWe study the ε-approximation of linear multivariate problems defined over weighted tensor pr...
AbstractWe study approximation of functions that may depend on infinitely many variables. We assume ...
AbstractLet X(t,ω) be an additive random field for (t,ω)∈[0,1]d×Ω. We investigate the complexity of ...
AbstractWe study the worst case complexity of weighted approximation and integration for functions d...
AbstractWe study approximation of univariate functions defined over the reals. We assume that the rt...
AbstractWe study the worst case complexity of weighted approximation and integration for functions d...
AbstractWe study weighted approximation and integration of Gaussian stochastic processes X defined o...
AbstractWe study weighted approximation and integration of Gaussian stochastic processes X defined o...
Using Smolyak's construction [5], we derive a new algorithm for approximating multivariate func...
AbstractWe study the minimal number n(ɛ,d) of information evaluations needed to compute a worst case...
AbstractWe study multivariate approximation with the error measured in L∞ and weighted L2 norms. We ...
AbstractWe study the L∞-approximation problem for weighted Banach spaces of smooth d-variate functio...
AbstractWe study the average complexity of linear problems, on a separable Banach space equipped wit...
AbstractWe study multivariate approximation with the error measured in L∞ and weighted L2 norms. We ...
We study d-variate approximation for a weighted unanchored Sobolev space having smoothness m ≥ 1. Fo...
AbstractWe study the ε-approximation of linear multivariate problems defined over weighted tensor pr...
AbstractWe study approximation of functions that may depend on infinitely many variables. We assume ...
AbstractLet X(t,ω) be an additive random field for (t,ω)∈[0,1]d×Ω. We investigate the complexity of ...
AbstractWe study the worst case complexity of weighted approximation and integration for functions d...
AbstractWe study approximation of univariate functions defined over the reals. We assume that the rt...
AbstractWe study the worst case complexity of weighted approximation and integration for functions d...
AbstractWe study weighted approximation and integration of Gaussian stochastic processes X defined o...
AbstractWe study weighted approximation and integration of Gaussian stochastic processes X defined o...
Using Smolyak's construction [5], we derive a new algorithm for approximating multivariate func...
AbstractWe study the minimal number n(ɛ,d) of information evaluations needed to compute a worst case...
AbstractWe study multivariate approximation with the error measured in L∞ and weighted L2 norms. We ...
AbstractWe study the L∞-approximation problem for weighted Banach spaces of smooth d-variate functio...
AbstractWe study the average complexity of linear problems, on a separable Banach space equipped wit...
AbstractWe study multivariate approximation with the error measured in L∞ and weighted L2 norms. We ...
We study d-variate approximation for a weighted unanchored Sobolev space having smoothness m ≥ 1. Fo...
AbstractWe study the ε-approximation of linear multivariate problems defined over weighted tensor pr...
AbstractWe study approximation of functions that may depend on infinitely many variables. We assume ...
AbstractLet X(t,ω) be an additive random field for (t,ω)∈[0,1]d×Ω. We investigate the complexity of ...