Abstract:
We study approximation problems for infinitely differentiable multivariate
functions in the worst-case setting.
Using a series of information-based algorithms as approximation tools, in which each
algorithm is constructed by performing finitely many standard information
operations, we prove that the
$L_\infty$-approximation problem is
exponentially convergent.
As a corollary, we show that the
corresponding integral problem is exponentially convergent as well.
Keywords:infinitely differentiable function class,
standard information, worst-case setting.