- 演讲人: 朱骥(密歇根大学,教授)
- 时间:2024年11月13日14:00(北京时间)
- 地点:浙江大学紫金港校区行政楼1417报告厅
Abstract: Recent advances in computing and
measurement technologies have led to an explosion in the amount of data with
network structures in a variety of fields including social networks, biological
networks, transportation networks, the World Wide Web, and so on. This creates
a compelling need to understand the generative mechanism of these networks and
to explore various characteristics of the network structures in a principled
way. Latent space models are powerful statistical tools for modeling and understanding
network data. While the importance of accounting for uncertainty in network
analysis is well recognized, current literature predominantly focuses on point
estimation and prediction, leaving the statistical inference of latent space
network models an open question. In this talk, I will present some of our
recent work that aims to fill this gap by providing a general framework for
analyzing the theoretical properties of the maximum likelihood estimators for
latent space network models. In particular, we establish uniform consistency
and individual asymptotic distribution results for latent space network models
with a broad range of link functions and edge types. Furthermore, the proposed
framework enables us to generalize our results to the sparse and dependent-edge
scenarios. Our theories are supported by simulation studies and have the
potential to be applied in downstream inferences, such as link prediction and
network-assisted supervised learning.
Brief bio: Ji Zhu is the Susan A. Murphy
Professor of Statistics at the University of Michigan, Ann Arbor. He received
his B.Sc. in Physics from Peking University, China in 1996 and M.Sc. and Ph.D.
in Statistics from Stanford University in 2000 and 2003, respectively. His
primary research interests include statistical machine learning,
high-dimensional data modeling, statistical network analysis, and their
applications to health and natural sciences. He received an NSF CAREER Award in
2008 and was elected as a Fellow of the American Statistical Association in
2013 and a Fellow of the Institute of Mathematical Statistics in 2015. From
2014 to 2020, he was recognized as an ISI Highly Cited Researcher by Web of
Science, which annually lists leading researchers in the sciences and social
sciences worldwide. He also received the International Chinese Statistical
Association Pao-Lu Hsu Award in 2022. He currently serves as the
Editor-in-Chief of the Annals of Applied Statistics.