xTRAM: Estimating equilibrium expectations from time-correlated simulation data at multiple thermodynamic states
Antonia S. J. S. Mey, Hao Wu, Frank No\'e

TL;DR
xTRAM is a novel estimator that efficiently computes equilibrium properties from time-correlated simulation data across multiple thermodynamic states, significantly improving convergence over existing methods.
Contribution
The paper introduces xTRAM, a generalized estimator based on Markov modeling that requires only local equilibrium, enhancing accuracy and efficiency in equilibrium property estimation.
Findings
xTRAM shows up to several orders of magnitude faster convergence.
Demonstrated effectiveness on four diverse systems.
Random-swapping protocol with xTRAM offers substantial efficiency gains.
Abstract
Computing the equilibrium properties of complex systems, such as free energy differences, is often hampered by rare events in the dynamics. Enhanced sampling methods may be used in order to speed up sampling by, for example, using high temperatures, as in parallel tempering, or simulating with a biasing potential such as in the case of umbrella sampling. The equilibrium properties of the thermodynamic state of interest (e.g., lowest temperature or unbiased potential) can be computed using reweighting estimators such as the weighted histogram analysis method or the multistate Bennett acceptance ratio (MBAR). weighted histogram analysis method and MBAR produce unbiased estimates, the simulation samples from the global equilibria at their respective thermodynamic state--a requirement that can be prohibitively expensive for some simulations such as a large parallel tempering ensemble of an…
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