Publications [#384150] of Sifan Liu
Papers Published
- Liu, S; Owen, AB. "Quasi-Monte Carlo quasi-Newton in variational bayes." Journal of Machine Learning Research 22 (January, 2021).
(last updated on 2026/01/17)Abstract:
Many machine learning problems optimize an objective that must be measured with noise. The primary method is a first order stochastic gradient descent using one or more Monte Carlo (MC) samples at each step. There are settings where ill-conditioning makes second order methods such as limited-memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) more effective. We study the use of randomized quasi-Monte Carlo (RQMC) sampling for such problems. When MC sampling has a root mean squared error (RMSE) of O(n-1/2) then RQMC has an RMSE of o(n-1/2) that can be close to O(n-3/2) in favorable settings. We prove that improved sampling accuracy translates directly to improved optimization. In our empirical investigations for variational Bayes, using RQMC with stochastic quasi-Newton method greatly speeds up the optimization, and sometimes finds a better parameter value than MC does.

