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arxiv: 1211.3470 · v1 · pith:QEUCQSPQnew · submitted 2012-11-15 · 🧮 math.NT · cs.NA· math.NA

On the uniform distribution modulo 1 of multidimensional LS-sequences

classification 🧮 math.NT cs.NAmath.NA
keywords ls-sequenceslow-discrepancymultidimensionalparametersalwaysappropriateassumecandidates
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Ingrid Carbone introduced the notion of so-called LS-sequences of points, which are obtained by a generalization of Kakutani's interval splitting procedure. Under an appropriate choice of the parameters $L$ and $S$, such sequences have low discrepancy, which means that they are natural candidates for Quasi-Monte Carlo integration. It is tempting to assume that LS-sequences can be combined coordinatewise to obtain a multidimensional low-discrepancy sequence. However, in the present paper we prove that this is not always the case: if the parameters $L_1,S_1$ and $L_2,S_2$ of two one-dimensional low-discrepancy LS-sequences satisfy certain number-theoretic conditions, then their two-dimensional combination is not even dense in $[0,1]^2$.

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