On convergence rates equivalency and sampling strategies in functional deconvolution models
Marianna Pensky, Theofanis Sapatinas

TL;DR
This paper analyzes the convergence rate equivalency between continuous and discrete functional deconvolution models across different sampling strategies and Besov spaces, classifying models into uniform, regular, and irregular types.
Contribution
It provides a comprehensive framework for understanding when discrete sampling schemes can effectively replace continuous models in deconvolution, including optimal sampling strategies.
Findings
Uniform models have identical convergence rates in discrete and continuous cases.
Regular models allow for optimal sampling strategies to match continuous convergence rates.
Irregular models lack a universal sampling strategy for optimal convergence.
Abstract
Using the asymptotical minimax framework, we examine convergence rates equivalency between a continuous functional deconvolution model and its real-life discrete counterpart over a wide range of Besov balls and for the -risk. For this purpose, all possible models are divided into three groups. For the models in the first group, which we call uniform, the convergence rates in the discrete and the continuous models coincide no matter what the sampling scheme is chosen, and hence the replacement of the discrete model by its continuous counterpart is legitimate. For the models in the second group, to which we refer as regular, one can point out the best sampling strategy in the discrete model, but not every sampling scheme leads to the same convergence rates; there are at least two sampling schemes which deliver different convergence rates in the discrete model (i.e., at least one of…
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