Lecture: Songcan Chen--High-Rankness of Missing Multi-label Learning (25 Nov, 2021)

发布者:杨璐发布时间:2021-11-22浏览次数:310

陈松灿教授学术报告


Title: High-Rankness of Missing Multi-label Learning

Speaker: Prof. Dr. Songcan Chen(陈松灿)

Affiliation: Nanjing University of Aeronautics and Astronautics

Time: 9:30-10:30am,  ThursdayNovember 25th, 2021

Venue: Academic Hall, 1st Floor, Nanjing Center for Applied Mathematics

 4 Liye Zone, TusCity, 26 Zhishi Rd, Chi-Lin Innovation Park, Nanjing


Abstract

Multi-label learning (MLL) is an important learning paradigm in machine learning where completing those missing labels is a key. One of Popular MLLs works under the low-rankness assumption for label completion, however, this is often violated in practice. In this talk, we first illustrate the high-rankness in single/multiview MLLs and more challenges in the latter setting, then provide the concise yet effective methods to meet them.

  

About the Speaker

陈松灿,南京航空航天大学计算机科学和技术学院/人工智能学院教授。国际模式识别学会会士(IAPR Fellow)和中国人工智能学会会士(CAAI Fellow)Google Scholar被引16200多次,H-指数582014-2020连续7年入选Elsevier中国高引学者榜。现任中国人工智能学会(CAAI)常务理事,CAAI机器学习专委会主任和江苏省人工智能学会(JSAI)常务副理事长。至今主持国家自然科学基金项目12项,其中重点项目1项。


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