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Convexity results and sharp error estimates in approximate multivariate integration
Authors:Allal Guessab  Gerhard Schmeisser
Institution:Department of Applied Mathematics, University of Pau, 64000 Pau, France ; Mathematical Institute, University of Erlangen-Nuremberg, 91054 Erlangen, Germany
Abstract:An interesting property of the midpoint rule and the trapezoidal rule, which is expressed by the so-called Hermite-Hadamard inequalities, is that they provide one-sided approximations to the integral of a convex function. We establish multivariate analogues of the Hermite-Hadamard inequalities and obtain access to multivariate integration formulae via convexity, in analogy to the univariate case. In particular, for simplices of arbitrary dimension, we present two families of integration formulae which both contain a multivariate analogue of the midpoint rule and the trapezoidal rule as boundary cases. The first family also includes a multivariate analogue of a Maclaurin formula and of the two-point Gaussian quadrature formula; the second family includes a multivariate analogue of a formula by P.C. Hammer and of Simpson's rule. In both families, we trace out those formulae which satisfy a Hermite-Hadamard inequality. As an immediate consequence of the latter, we obtain sharp error estimates for twice continuously differentiable functions.

Keywords:Multivariate approximate integration  convex functions  Hermite--Hadamard inequality  error estimates
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