科学研究
报告题目:

Langevin Dynamics: Non-Convex Stochastic Optimization and Acceleration

报告人:

Ass.Prof.Lingjiong Zhu(Department of Mathematics, Florida State University)

报告时间:

报告地点:

2021欧洲杯买球平台官网东北楼四楼报告厅(404)

报告摘要:

Langevin dynamics (LD) has been proven to be a powerful technique for optimizing a non-convex objective as an efficient algorithm to find local minima while eventually visiting a global minimum on longer time-scales. LD is based on the first-order Langevin diffusion which is reversible in time. We consider variants on non-reversible Langevin diffusions: the underdamped Langevin dynamics (ULD), stochastic gradient Hamiltonian Monte Carlo (SGHMC) and the Langevin dynamics with a non-symmetric drift (NLD). We study non-convex stochastic optimization problems, as well as the recurrence and escape times, and expected exit times, and show that acceleration is possible over the first-order dynamics.

This is based on the joint work with Xuefeng Gao and Mert Gurbuzbalaban.