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Mean-field variational approximate Bayesian inference for latent variable models

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Academic year: 2021

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Figure 1: Dataset 1: plot of simulated data and of Φ(1 + 2q) (curve)
Figure 2: Dataset 1: evolution of the Gibbs Markov chains over 100, 000 iterations
Figure 3: Dataset 1: histograms of the last 20, 000 Gibbs simulations, variational densities (curve) and maximum likelihood estimations (straight line)
Figure 4: Dataset 2: plot of simulated data and of Φ(1 + 5q) (curve)
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