Strong and weak sharp bounds for Neural Network Operators in Sobolev-Orlicz spaces and their quantitative extensions to Orlicz spaces
Danilo Costarelli, Michele Piconi

TL;DR
This paper develops sharp bounds for neural network operators in Sobolev-Orlicz and Orlicz spaces, introducing new tools and inequalities to analyze convergence and asymptotic behavior under broad conditions.
Contribution
It introduces novel bounds, inequalities, and function spaces for neural network operators in Sobolev-Orlicz and Orlicz spaces, extending analysis to broader classes of functions.
Findings
Established strong and weak estimates for neural network operators.
Proved convergence results in various Orlicz spaces, including exponential cases.
Introduced new function spaces and inequalities for analysis in Orlicz spaces.
Abstract
In this paper, we establish sharp bounds for a family of Kantorovich-type neural network operators within the general frameworks of Sobolev-Orlicz and Orlicz spaces. We establish both strong (in terms of the Luxemburg norm) and weak (in terms of the modular functional) estimates, using different approaches. The strong estimates are derived for spaces generated by -functions that are -functions or satisfy the -condition. Such estimates also lead to convergence results with respect to the Luxemburg norm in several instances of Orlicz spaces, including the exponential case. Meanwhile, the weak estimates are achieved under less restrictive assumptions on the involved -function. To obtain these results, we introduce some new tools and techniques in Orlicz spaces. Central to our approach is the Orlicz Minkowski inequality, which allows us to obtain unified…
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