主讲人:洪庆国 美国宾州州立大学
时间:2021年11月17日10:00
地点:腾讯会议 845 355 532
举办单位:数理学院
主讲人介绍:洪庆国,博士,先后在奥地利科学院Radon研究所(RICAM),德国Duisburg-Essen University,美国The Pennsylvania State University 从事博士后研究。目前研究兴趣包括迭代法,间断有限元方法及应用。在SIAM J. Numer. Anal., Numer. Math., Comput. Methods Appl. Mech. Engrg.和中国科学-数学等国内外期刊发表系列论文。
内容介绍:Methods for solving PDEs using neural networks have recently become a very important topic. We provide an a priori error analysis for such methods which is based on the K1(D)-norm of the solution. We show that the resulting constrained optimization problem can be efficiently solved using a greedy algorithm, which replaces stochastic gradient descent. Following this, we show that the error arising from discretizing the energy integrals is bounded both in the deterministic case, i.e. when using numerical quadrature, and also in the stochastic case, i.e. when sampling points to approximate the integrals. In the later case, we use a Rademacher complexity analysis, and in the former we use standard numerical quadrature bounds. This extends existing results to methods which use a general dictionary of functions to learn solutions to PDEs and importantly gives a consistent analysis which incorporates the optimization, approximation, and generalization aspects of the problem. In addition, the Rademacher complexity analysis is simplified and generalized, which enables application to a wide range of problems.