Statistics in the Mix: Navigating Interdisciplinary Challenges in Data Science

Hao Mei Chair
School of Statistics, Renmin University of China
 
Fang Yao Panelist
Peking University
 
Ke Deng Panelist
Tsinghua University
 
Xueqin Wang Panelist
University of Science and Technology of China
 
Yang Zhao Panelist
Nanjing Medical University
 
Hui Huang Panelist
Renmin University of China
 
Yang Li Organizer
 
Hao Mei Organizer
School of Statistics, Renmin University of China
 
Tuesday, Aug 5: 2:00 PM - 3:50 PM
0331 
Invited Panel Session 
Music City Center 
Room: CC-214 
In the modern era of data-driven discovery, statistics stands at the core of interdisciplinary research, powering advancements across a wide range of domains, such as biomedical sciences, environmental studies, social sciences, and beyond. This session, "Statistics in the Mix: Navigating Interdisciplinary Challenges in Data Science," brings together innovative statistical methodologies designed to tackle real-world complexities at the intersections of diverse fields. It highlights a broad spectrum of recent developments, including tree-based methods for confounding control in complex biomedical settings; statistical support for environmental sciences, such as climate change modeling, air quality forecasting, and ecosystem service evaluation; semiparametric estimation with neural networks, enabling valid and interpretable inference on parameters of interest; and interdisciplinary data science driven by large-scale statistical consulting efforts. By emphasizing the unifying role of statistical thinking, the session illustrates how statistical innovation not only fosters meaningful cross-disciplinary integration but also continues to serve as a methodological engine and collaborative bridge in modern scientific inquiry.

Applied

Yes

Main Sponsor

International Chinese Statistical Association

Co Sponsors

International Statistical Institute
Section on Statistics and Data Science Education