Feb. 5, 2024, 6:43 a.m. | Vy Vo Trung Le Long-Tung Vuong He Zhao Edwin Bonilla Dinh Phung

cs.LG updates on arXiv.org arxiv.org

Estimating the parameters of a probabilistic directed graphical model from incomplete data remains a long-standing challenge. This is because, in the presence of latent variables, both the likelihood function and posterior distribution are intractable without further assumptions about structural dependencies or model classes. While existing learning methods are fundamentally based on likelihood maximization, here we offer a new view of the parameter learning problem through the lens of optimal transport. This perspective licenses a general framework that operates on any …

assumptions challenge cs.lg cs.si data dependencies distribution function incomplete data likelihood parameters posterior transport variables

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