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Exploiting translational invariance in Matrix Product State simulations of spin chains with periodic boundary conditions (1005.5195v1)

Published 27 May 2010 in quant-ph and cond-mat.str-el

Abstract: We present a matrix product state (MPS) algorithm to approximate ground states of translationally invariant systems with periodic boundary conditions. For a fixed value of the bond dimension D of the MPS, we discuss how to minimize the computational cost to obtain a seemingly optimal MPS approximation to the ground state. In a chain of N sites and correlation length \xi, the computational cost formally scales as g(D,\xi /N)D3, where g(D,\xi /N) is a nontrivial function. For \xi << N, this scaling reduces to D3, independent of the system size N, making our algorithm N times faster than previous proposals. We apply the method to obtain MPS approximations for the ground states of the critical quantum Ising and Heisenberg spin-1/2 models as well as for the noncritical Heisenberg spin-1 model. In the critical case, for any chain length N, we find a model-dependent bond dimension D(N) above which the polynomial decay of correlations is faithfully reproduced throughout the entire system.

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