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Numerical analysis / Diophantine approximation / Monte Carlo methods / Low-discrepancy sequence / Quasi-Monte Carlo method / Halton sequence / Quasi-Monte Carlo methods in finance / Normal distribution / Reproducing kernel Hilbert space / Mathematical analysis / Mathematics / Randomness


Quasi-Monte Carlo Feature Maps for Shift-Invariant Kernels Jiyan Yang1 ICME, Stanford University, Stanford, CAJIYAN @ STANFORD . EDU
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Document Date: 2014-02-16 19:30:21


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File Size: 498,71 KB

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