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The power of adaptive algorithms for functions with singularities

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This is an overview of recent results on complexity and optimality of adaptive algorithms for integrating and approximating scalar piecewise r-smooth functions with unknown singular points. We provide adaptive algorithms that use at most n function samples and have the worst case errors proportional to nr for functions with at most one unknown singularity. This is a tremendous improvement over nonadaptive algorithms whose worst case errors are at best proportional to n−1 for integration and n−1/p for the Lp approximation problem. For functions with multiple singular points the adaptive algorithms cease to dominate the nonadaptive ones in the worst case setting. Fortunately, they regain their superiority in the asymptotic setting. Indeed, they yield convergence of order nr for piecewise r-smooth functions with an arbitrary (unknown but finite) number of singularities. None of these results hold for the L approximation. However, they hold for the Skorohodmetric, which we argue to be more appropriate than L for dealing with discontinuous functions. Numerical test results and possible extensions are also discussed.

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Correspondence to Leszek Plaskota.

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Dedicated to Steve Smale in celebration of his 80th birthday

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Plaskota, L., Wasilkowski, G.W. The power of adaptive algorithms for functions with singularities. J. Fixed Point Theory Appl. 6, 227–248 (2009). https://doi.org/10.1007/s11784-009-0121-x

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  • DOI: https://doi.org/10.1007/s11784-009-0121-x

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