AI RESEARCH

Corrected Samplers for Discrete Flow Models

arXiv CS.LG

ArXi:2601.22519v2 Announce Type: replace-cross Discrete flow models (DFMs) have been proposed to learn the data distribution on finite state space, offering a flexible framework as an alternative to discrete diffusion models. A line of recent work has studied samplers for discrete diffusion models, such as tau-leaping and Euler solver. However, these samplers require a large number of iterations to control discretization error, since the transition rates are frozen in time and evaluated at the initial state within each time interval.