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arxiv: 1510.07557 · v1 · pith:54JDG7YJnew · submitted 2015-10-26 · 🧮 math.NA

L₁ spline fits via sliding window process : continuous and discrete cases

classification 🧮 math.NA
keywords splinebestfitsapproximationdatasetsmethodnodessliding
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Best $L_1$ approximation of the Heaviside function and best $\ell_1$ approximation of multiscale univariate datasets by cubic splines have a Gibbs phenomenon. Numerical experiments show that it can be reduced by using $L_1$ spline fits which are best $L_1$ approximations in an appropriate spline space obtained by the union of $L_1$ interpolation splines. We prove here the existence of $L_1$ spline fits which has never been done to the best of our knowledge. Their major disadvantage is that obtaining them can be time consuming. Thus we propose a sliding window method on seven nodes which is as efficient as the global method both for functions and datasets with abrupt changes of magnitude but within a linear complexity on the number of spline nodes.

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