Learning and Identifying

发布者:李晶晶发布时间:2019-10-21浏览次数:155

吴文俊数学重点实验室分析系列报告

 
TitleLearning and Identifying
 
Speaker:李落清教授 (湖北大学)
 
Time20191022      下午 16:00-17:00
 
Room:东区管理科研楼  数学科学学院1418
 

AbstractIn this talk we will introduce a learning theory approach to the topic of estimating transfer functions in system identification. A frequency domain identification problem is formulated as an atomic norm regularization scheme in a random design framework of learning theory. Such a formulation makes it possible to obtain sparsity and provide finite sample estimates for learning the transfer function in a learning theory framework. Error analysis is done for the learning algorithm by applying a local polynomial reproduction formula, concentration inequalities and iteration techniques. The convergence rate obtained here is the best in the literature. It is hoped that the learning theory approach to the frequency domain identification problem would bring new ideas and lead to more interactions among the areas of system identification, learning theory and frequency analysis.