吴文俊数学重点实验室计算与应用系列报告之四【Yanlai Chen】

发布者:系统管理员发布时间:2015-07-08浏览次数:13

 

 报告题目:Reduced basis methods and their application in data science

 

报告人:Yanlai Chen,  University of Massachusetts

  间:2015717    下午16:00

  点:东区管理科研楼  数学科学学院1218

内容提要:

Models of reduced computational complexity is indispensable in scenarios where a large number of numerical solutions to a parametrized problem are desired in a fast/real-time fashion. These include simulation-based design, parameter optimization, optimal control, multi-model/scale analysis, uncertainty quantification. Thanks to an offline-online procedure and the recognition that the parameter-induced solution manifolds can be well approximated by finite-dimensional spaces, reduced basis method (RBM) and reduced collocation method (RCM) can improve efficiency by several orders of magnitudes. The accuracy of the RBM solution is maintained through a rigorous a posteriori error estimator whose efficient development is critical.

 

In this talk, I will give a brief introduction of the RBM, discuss recent and ongoing efforts to develop RCM, and explain how the newly-designed Reduced Basis Decomposition can be used for data compression and face recognition.

 

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