Variational Inference
Variational inference (VI) is a powerful family of approximate Bayesian inference methods aiming to efficiently estimate complex probability distributions, often encountered in machine learning and scientific modeling. Current research focuses on improving VI's scalability and accuracy through novel algorithms like stochastic variance reduction, amortized inference, and the use of advanced model architectures such as Gaussian processes, Bayesian neural networks, and mixture models, often within the context of specific applications like anomaly detection and inverse problems. The resulting advancements in VI are significantly impacting various fields, enabling more robust uncertainty quantification, improved model interpretability, and efficient solutions to previously intractable problems in areas ranging from 3D scene modeling to causal discovery.
Papers
Improving the performance of Stein variational inference through extreme sparsification of physically-constrained neural network models
Govinda Anantha Padmanabha, Jan Niklas Fuhg, Cosmin Safta, Reese E. Jones, Nikolaos Bouklas
Particle Semi-Implicit Variational Inference
Jen Ning Lim, Adam M. Johansen