Preconditioned Discrete-HAMS: A Second-order Irreversible Discrete Sampler
Preconditioned Discrete-HAMS: A Second-order Irreversible Discrete Sampler
Gradient-based Markov Chain Monte Carlo methods have recently received much attention for sampling discrete distributions, with notable examples such as Norm Constrained Gradient (NCG), Auxiliary Variable Gradient (AVG), and Discrete Hamiltonian Assisted Metropolis Sampling (DHAMS). In this work, we propose the Preconditioned Discrete-HAMS (PDHAMS) algorithm, which extends DHAMS by incorporating a second-order, quadratic approximation of the potential function, and uses Gaussian integral trick to avoid directly sampling a pairwise Markov random field. The PDHAMS sampler not only satisfies generalized detailed balance, hence enabling irreversible sampling, but also is a rejection-free property for a target distribution with a quadratic potential function. In various numerical experiments, PDHAMS algorithms consistently yield superior performance compared with other methods.
Yuze Zhou、Zhiqiang Tan
计算技术、计算机技术
Yuze Zhou,Zhiqiang Tan.Preconditioned Discrete-HAMS: A Second-order Irreversible Discrete Sampler[EB/OL].(2025-07-31)[2025-08-11].https://arxiv.org/abs/2507.21982.点此复制
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