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arxiv: cond-mat/9601059 · v2 · pith:6E2A4PEOnew · submitted 1996-01-16 · ❄️ cond-mat

The Dynamic Exponent of the Two-Dimensional Ising Model and Monte Carlo Computation of the Sub-Dominant Eigenvalue of the Stochastic Matrix

classification ❄️ cond-mat
keywords timesautocorrelationcarloexponentisingmethodmontetwo-dimensional
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We introduce a novel variance-reducing Monte Carlo algorithm for accurate determination of autocorrelation times. We apply this method to two-dimensional Ising systems with sizes up to $15 \times 15$, using single-spin flip dynamics, random site selection and transition probabilities according to the heat-bath method. From a finite-size scaling analysis of these autocorrelation times, the dynamical critical exponent $z$ is determined as $z=2.1665$ (12).

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