Learning Latent Energy-Based Models via Interacting Particle Langevin Dynamics
By: Joanna Marks, Tim Y. J. Wang, O. Deniz Akyildiz
Potential Business Impact:
Teaches computers to learn from data better.
We develop interacting particle algorithms for learning latent variable models with energy-based priors. To do so, we leverage recent developments in particle-based methods for solving maximum marginal likelihood estimation (MMLE) problems. Specifically, we provide a continuous-time framework for learning latent energy-based models, by defining stochastic differential equations (SDEs) that provably solve the MMLE problem. We obtain a practical algorithm as a discretisation of these SDEs and provide theoretical guarantees for the convergence of the proposed algorithm. Finally, we demonstrate the empirical effectiveness of our method on synthetic and image datasets.
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