Feb. 6, 2024, 5:43 a.m. | Kien Do Duc Kieu Toan Nguyen Dang Nguyen Hung Le Dung Nguyen Thin Nguyen

cs.LG updates on arXiv.org arxiv.org

We introduce a variational inference interpretation for models of "posterior flows" - generalizations of "probability flows" to a broader class of stochastic processes not necessarily diffusion processes. We coin the resulting models as "Variational Flow Models". Additionally, we propose a systematic training-free method to transform the posterior flow of a "linear" stochastic process characterized by the equation Xt = at * X0 + st * X1 into a straight constant-speed (SC) flow, reminiscent of Rectified Flow. This transformation facilitates fast …

class cs.ai cs.lg diffusion flow free inference interpretation linear posterior probability process processes stochastic stochastic process style training

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