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Stochastic thermodynamic integration: efficient Bayesian model selection via stochastic gradient MCMC

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Academic year: 2021

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Fig. 2. Illustration of PSGLD. Given the blocks in a subsample, the corresponding blocks in W and H become conditionally  indepen-dent, as illustrated in different textures.
Fig. 3. Results of the synthetic data experiments conducted on the NMF model. The vertical lines show the true value of R.

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