
The author studies the expected error of approximation for a class of adaptive numerical integration methods. He analyzes a heuristic error criterion that can be used to choose the initial approximation and serve as the termination and adaptation criterion with a rigorous mathematical (probabilistic) basis. The probabilistic model assumes that the functions are distributed according to a k-fold Wiener measure on an appropriate space of k-times continuously differentiable functions.
Statistics and Probability, probabilistic model, Numerical Analysis, Algebra and Number Theory, Control and Optimization, adaptive numerical integration, Set functions and measures and integrals in infinite-dimensional spaces (Wiener measure, Gaussian measure, etc.), error estimation, Applied Mathematics, Numerical quadrature and cubature formulas, Approximate quadratures, Wiener measure
Statistics and Probability, probabilistic model, Numerical Analysis, Algebra and Number Theory, Control and Optimization, adaptive numerical integration, Set functions and measures and integrals in infinite-dimensional spaces (Wiener measure, Gaussian measure, etc.), error estimation, Applied Mathematics, Numerical quadrature and cubature formulas, Approximate quadratures, Wiener measure
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