Data Assimilation and Sampling in Banach spaces
Abstract
This paper studies the problem of approximating a function f in a Banach space X from measurements lj(f), j=1,…,m, where the lj are linear functionals from X*. Most results study this problem for classical Banach spaces X such as the Lp spaces, 1 p ∞, and for K the unit ball of a smoothness space in X. Our interest in this paper is in the model classes K=K(ε,V), with ε>0 and V a finite dimensional subspace of X, which consists of all f∈ X such that dist(f,V)X ε. These model classes, called approximation sets, arise naturally in application domains such as parametric partial differential equations, uncertainty quantification, and signal processing. A general theory for the recovery of approximation sets in a Banach space is given. This theory includes tight a priori bounds on optimal performance, and algorithms for finding near optimal approximations. We show how the recovery problem for approximation sets is connected with well-studied concepts in Banach space theory such as liftings and the angle between spaces. Examples are given that show how this theory can be used to recover several recent results on sampling and data assimilation.
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