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Entanglement Properties of Quantum Superpositions of Smooth, Differentiable Functions

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 نشر من قبل Adam Holmes
 تاريخ النشر 2020
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We present an entanglement analysis of quantum superpositions corresponding to smooth, differentiable, real-valued (SDR) univariate functions. SDR functions are shown to be scalably approximated by low-rank matrix product states, for large system discretizations. We show that the maximum von-Neumann bipartite entropy of these functions grows logarithmically with the system size. This implies that efficient low-rank approximations to these functions exist in a matrix product state (MPS) for large systems. As a corollary, we show an upper bound on trace-distance approximation accuracy for a rank-2 MPS as $Omega(log N/N)$, implying that these low-rank approximations can scale accurately for large quantum systems.



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