Fast Black-box Variational Inference through Stochastic Trust-Region Optimization
Regier, Jeffrey, Jordan, Michael I., McAuliffe, Jon
–Neural Information Processing Systems
We introduce TrustVI, a fast second-order algorithm for black-box variational inference based on trust-region optimization and the reparameterization trick. At each iteration, TrustVI proposes and assesses a step based on minibatches of draws from the variational distribution. We implemented TrustVI in the Stan framework and compared it to two alternatives: Automatic Differentiation Variational Inference (ADVI) and Hessian-free Stochastic Gradient Variational Inference (HFSGVI). The former is based on stochastic first-order optimization. The latter uses second-order information, but lacks convergence guarantees.
Neural Information Processing Systems
Feb-14-2020, 10:16:04 GMT