Abstract. Nonlinear approximation has usually been studied under deterministic assumptions and complete information about the underlying functions. In the present paper we assume only partial information, e.g., function values at some points, and we are interested in the average case error and complexity of nonlinear approxima-tion. We show that the problem can be essentially decomposed in two independent problems related to average case nonlinear (restricted) approximation from complete information, and to average case unrestricted approximation from partial information. The results are then applied to average case piecewise polynomial approximation on C([0; 1]) based on function values with respect to r-fold Wiener measure. In this case, ...
AbstractWe present general results on the average case complexity of approximating linear operators ...
Computational complexity has two goals: finding the inherent cost of some problem, and finding optim...
We study optimal algorithms and optimal information in an average case model for linear problems in ...
AbstractNonlinear approximation (NA) has usually been studied under deterministic assumptions and co...
Nonlinear approximation has usually been studied under deterministic assumption and complete informa...
Nonlinear approximation has usually been studied under deterministic assumption and complete informa...
AbstractNonlinear approximation (NA) has usually been studied under deterministic assumptions and co...
AbstractIn neural network theory the complexity of constructing networks to approximate input-output...
AbstractWe study the average complexity of linear problems, on a separable Banach space equipped wit...
AbstractWe study the minimal cost of information (called the information complexity) for approximati...
AbstractWe study algorithms for the approximation of functions, the error is measured in an L2 norm....
AbstractWe study the minimal cost of information (called the information complexity) for approximati...
AbstractWe shall study maximal errors of approximating linear problems. As possible classes of infor...
AbstractWe study approximation of linear functionals on separable Banach spaces equipped with a Gaus...
AbstractWe consider the average caseL∞-approximation of functions fromCr([0, 1]) with respect to the...
AbstractWe present general results on the average case complexity of approximating linear operators ...
Computational complexity has two goals: finding the inherent cost of some problem, and finding optim...
We study optimal algorithms and optimal information in an average case model for linear problems in ...
AbstractNonlinear approximation (NA) has usually been studied under deterministic assumptions and co...
Nonlinear approximation has usually been studied under deterministic assumption and complete informa...
Nonlinear approximation has usually been studied under deterministic assumption and complete informa...
AbstractNonlinear approximation (NA) has usually been studied under deterministic assumptions and co...
AbstractIn neural network theory the complexity of constructing networks to approximate input-output...
AbstractWe study the average complexity of linear problems, on a separable Banach space equipped wit...
AbstractWe study the minimal cost of information (called the information complexity) for approximati...
AbstractWe study algorithms for the approximation of functions, the error is measured in an L2 norm....
AbstractWe study the minimal cost of information (called the information complexity) for approximati...
AbstractWe shall study maximal errors of approximating linear problems. As possible classes of infor...
AbstractWe study approximation of linear functionals on separable Banach spaces equipped with a Gaus...
AbstractWe consider the average caseL∞-approximation of functions fromCr([0, 1]) with respect to the...
AbstractWe present general results on the average case complexity of approximating linear operators ...
Computational complexity has two goals: finding the inherent cost of some problem, and finding optim...
We study optimal algorithms and optimal information in an average case model for linear problems in ...