Aldaz-Kounchev-Render operators and their approximation properties

04/22/2022
by   Ana Acu, et al.
0

The approximation properties of the Aldaz-Kounchev-Render (AKR) operators are discussed and classes of functions for which these operators approximate better than the classical Bernstein operators are described. The new results are then extended to the bivariate case on the square [0,1]^2 and compared with other existing results known in literature. Several numerical examples, illustrating the relevance and supporting the theoretical findings, are presented

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