6533b834fe1ef96bd129de54

RESEARCH PRODUCT

Statistical and systematic errors in Monte Carlo sampling

Kurt BinderDavid P. LandauAlan M. Ferrenberg

subject

Phase transitionComputer simulationMonte Carlo methodStatistical and Nonlinear PhysicsIsing modelStatistical mechanicsStatistical physicsScalingFinite setMathematical PhysicsBinMathematics

description

We have studied the statistical and systematic errors which arise in Monte Carlo simulations and how the magnitude of these errors depends on the size of the system being examined when a fixed amount of computer time is used. We find that, depending on the degree of self-averaging exhibited by the quantities measured, the statistical errors can increase, decrease, or stay the same as the system size is increased. The systematic underestimation of response functions due to the finite number of measurements made is also studied. We develop a scaling formalism to describe the size dependence of these errors, as well as their dependence on the “bin length” (size of the statistical sample), both at and away from a phase transition. The formalism is tested using simulations of thed=3 Ising model at the infinite-lattice transition temperature. We show that for a 96×96×96 system noticeable systematic errors (systematic underestimation of response functions) are still present for total run lengths of 106 Monte Carlo steps/site (MCS) with measurements taken at regular intervals of 10 MCS.

https://doi.org/10.1007/bf01029988