SOTAVerified

Joint control variate for faster black-box variational inference

2022-10-13Code Available0· sign in to hype

Xi Wang, Tomas Geffner, Justin Domke

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Black-box variational inference performance is sometimes hindered by the use of gradient estimators with high variance. This variance comes from two sources of randomness: Data subsampling and Monte Carlo sampling. While existing control variates only address Monte Carlo noise, and incremental gradient methods typically only address data subsampling, we propose a new "joint" control variate that jointly reduces variance from both sources of noise. This significantly reduces gradient variance, leading to faster optimization in several applications.

Tasks

Reproductions