Generating Nested Quadrature Rules with Positive Weights based on Arbitrary Sample Sets
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B. Sanderse | W.A.A.M. Bierbooms | L.M.M. van den Bos | G.J.W. van Bussel | B. Sanderse | G. Bussel | W. Bierbooms | L. V. D. Bos
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