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Pricing Data Assets

来源: 12-22

时间:17:00-17:45, 2024-12-23

地点:A6-1

主讲人:Liyan Han

BIMSA Member Seminar

Pricing Data Assets


Speaker: Liyan Han (BIMSA)

Time: 17:00-17:45, 2024-12-23

Venue: A6-1

Zoom: 388 528 9728

Password: BIMSA

Speaker Intro

Dr. Han Liyan, Professor at Beijing Institute of Mathematical Sciences and Applications, Lab of Digital Economy. He once worked as a chief professor of economics in Beihang University for 20 years. He was awarded as Beijing Renowned Teacher, Distinguished Fellow in Chinese Quantitative Economics, and Special government allowances of the State Council. His doctorate research focused on fuzzy information and knowledge engineering in 1990s, and now his research interests focus on fintech, foreign exchange rate combined with monetary policy, and green finance as well.

Member Seminar Intro

The BIMSA member seminar is a weekly event during which researchers engage in discussions about their extensive research interests, addressing a diverse audience that includes fellow researchers and all postdoctoral scholars within the institute. This forum provides a unique privilege and an invaluable opportunity for each research faculty member, serving as a speaker, to introduce their research field, promote the subject within the institute, and ignite the potential for future collaborations with other research groups within the institute.

The lecture format consists of a 30-minute colloquium-style presentation, thoughtfully tailored to be accessible to postdoctoral scholars and researchers from diverse disciplines within the institute. Following the presentation, a 15-minute discussion session is anticipated, involving active participation from postdocs representing various fields.

It is mandatory for all postdocs at the institute to actively participate in this event. The enthusiastic involvement of faculty members is greatly valued and will prove mutually beneficial for both the speaker and the junior audience.

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