This course contains the lecture notes of the course "Probabilistic deep learning" given in the Master's programme in AI of Radboud university. The material is at a preliminal stage and it likely contains typos, small errors and inaccuracies.
- Probabilistic models and maximum likelihood
- Deep learning
- Univariate Bayesian inference
- Univariate Bayesian inference by gradient descent
- Multivariate inference
- From importance sampling to stochastic variational inference
- Timeseries analysis and structured variational inference
- Amortized inference and inference networks
- Simultaneous variational inference and maximum likelihood
- Variational gradient descent for discrete models
- Gradient estimators
- Variance reduction
- Variational inference with normalizing flows
- Black-box and likelihood-free inference
- Probabilistic programming and automatic inference
- Variational supervised learning
- Bayesian neural networks
- Generative modeling and variational autoencoders
- Ensamble methods
- Probabilistic metalearning
- Probabilistic geometric deep learning
- Bayesian decision theory
- KL control theory and reinforcment learning
- Belief-augmented reinforcement learning