NANANov 7, 2015

Hyperbolic cross approximation in infinite dimensions

arXiv:1501.0111933 citationsh-index: 53
Originality Highly original
AI Analysis

For researchers in parametric and stochastic PDEs, this establishes a rigorous linear approximation theory in infinite dimensions, showing tractability of previously intractable problems.

The paper provides tight bounds on hyperbolic cross index set cardinality for infinite-dimensional mixed smoothness spaces, leading to dimension-independent linear approximation rates for functions from these spaces, with rates independent of smoothness parameters.

We give tight upper and lower bounds of the cardinality of the index sets of certain hyperbolic crosses which reflect mixed Sobolev-Korobov-type smoothness and mixed Sobolev-analytic-type smoothness in the infinite-dimensional case where specific summability properties of the smoothness indices are fulfilled. These estimates are then applied to the linear approximation of functions from the associated spaces in terms of the $\varepsilon$-dimension of their unit balls. Here, the approximation is based on linear information. Such function spaces appear for example for the solution of parametric and stochastic PDEs. The obtained upper and lower bounds of the approximation error as well as of the associated $\varepsilon$-complexities are completely independent of any dimension. Moreover, the rates are independent of the parameters which define the smoothness properties of the infinite-variate parametric or stochastic part of the solution. These parameters are only contained in the order constants. This way, linear approximation theory becomes possible in the infinite-dimensional case and corresponding infinite-dimensional problems get tractable.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes