Randomized approximation of summable sequences -- adaptive and non-adaptive

Abstract

We prove lower bounds for the randomized approximation of the embedding 1m → ∞m based on algorithms that use arbitrary linear (hence non-adaptive) information provided by a (randomized) measurement matrix N ∈ Rn × m. These lower bounds reflect the increasing difficulty of the problem for m ∞, namely, a term m in the complexity n. This result implies that non-compact operators between arbitrary Banach spaces are not approximable using non-adaptive Monte Carlo methods. We also compare these lower bounds for non-adaptive methods with upper bounds based on adaptive, randomized methods for recovery for which the complexity n only exhibits a ( m)-dependence. In doing so we give an example of linear problems where the error for adaptive vs. non-adaptive Monte Carlo methods shows a gap of order n1/2 ( n)-1/2.

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