Composing graphical models with neural networks for structured representations and fast inference
–Neural Information Processing Systems
We propose a general modeling and inference framework that combines the complementary strengths of probabilistic graphical models and deep learning methods. For inference, we use recognition networks to produce local evidence potentials, then combine them with the model distribution using efficient message-passing algorithms. All components are trained simultaneously with a single stochastic variational inference objective. We illustrate this framework by automatically segmenting and categorizing mouse behavior from raw depth video, and demonstrate several other example models.
Neural Information Processing Systems
May-27-2025, 19:03:30 GMT
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