Improving the Asymptotic Performance of Markov Chain Monte-Carlo by Inserting Vortices
Sun, Yi, Schmidhuber, Jürgen, Gomez, Faustino J.
–Neural Information Processing Systems
We present a new way of converting a reversible finite Markov chain into a nonreversible one, with a theoretical guarantee that the asymptotic variance of the MCMC estimator based on the non-reversible chain is reduced. The method is applicable to any reversible chain whose states are not connected through a tree, and can be interpreted graphically as inserting vortices into the state transition graph. Our result confirms that non-reversible chains are fundamentally better than reversible ones in terms of asymptotic performance, and suggests interesting directions for further improving MCMC.
Neural Information Processing Systems
Dec-31-2010