数学系Seminar第2042期 Algorithmic Design for Big Data Related Optimization

创建时间:  2020/11/05  龚惠英   浏览次数:   返回

报告主题:Algorithmic Design for Big Data Related Optimization

报告人:陈彩华 副教授 (南京大学)

报告时间:2020年11月6日(周五) 15:00

报告地点:G507

邀请人:徐姿

主办部门:太阳成集团tyc33455数学系

报告摘要:We live in the age of big data. The 5 characteristics of big data - volume, value, variety, velocity and veracity - have a significant impact on optimization. In this talk, we discuss some thinking of algorithmic design for big data related optimization problems. Specifically, we consider splitting methods for large scale structure optimization, to analyze the data with high volume and low value density. We also design efficient algorithms for distribution robust optimization, to cope with brittle veracity in data analysis. Finally, we propose LP-based approach for Markov Decision Process, which lays a deep ground in sequential decision making with dynamic data generated at a high velocity.


欢迎教师、员工参加!

上一条:数学系Seminar第2043期 Isomorphism between the R-matrix and Drinfeld presentations of quantum affine algebras

下一条:数学系Seminar第2041期 Massive Random Access for 5G and Beyond: An Optimization Perspective


数学系Seminar第2042期 Algorithmic Design for Big Data Related Optimization

创建时间:  2020/11/05  龚惠英   浏览次数:   返回

报告主题:Algorithmic Design for Big Data Related Optimization

报告人:陈彩华 副教授 (南京大学)

报告时间:2020年11月6日(周五) 15:00

报告地点:G507

邀请人:徐姿

主办部门:太阳成集团tyc33455数学系

报告摘要:We live in the age of big data. The 5 characteristics of big data - volume, value, variety, velocity and veracity - have a significant impact on optimization. In this talk, we discuss some thinking of algorithmic design for big data related optimization problems. Specifically, we consider splitting methods for large scale structure optimization, to analyze the data with high volume and low value density. We also design efficient algorithms for distribution robust optimization, to cope with brittle veracity in data analysis. Finally, we propose LP-based approach for Markov Decision Process, which lays a deep ground in sequential decision making with dynamic data generated at a high velocity.


欢迎教师、员工参加!

上一条:数学系Seminar第2043期 Isomorphism between the R-matrix and Drinfeld presentations of quantum affine algebras

下一条:数学系Seminar第2041期 Massive Random Access for 5G and Beyond: An Optimization Perspective