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MIDAS Seminar Series presents: Kevin Xu, PhD, University of Toledo

September 28 @ 4:00 pm - 5:00 pm

Room 340 West Hall

Kevin S. Xu

Assistant Professor

Electrical Engineering and Computer Science

University of Toledo

 

“Statistical models for analyzing dynamic social network data”

 

Abstract: Due in part to the ubiquity of online social networks these days, interest in analyzing social network data has spread beyond its traditional home in the social sciences to many other disciplines including physics, computer science, statistics, and engineering. A topic of significant importance in social network analysis is the creation of statistical models for social network data. Many social network data involve relations between people observed at multiple points in time and are thus dynamic network data. In this talk, I introduce several statistical models for analyzing two types of dynamic network data. Discrete-time network data, also known as network panel data, represent the structure of the social network at regular time intervals, e.g. over each week or each month.Continuous-time network data, also known as timestamped network or relational event data, are collected with finer granularity on the time and at irregular time intervals. I demonstrate how these models can be used to infer network structures and how they evolve over time on several dynamic social network data sets, including a network of physical proximities between people at a university and a network of wall posts between users on Facebook.

 

Bio: Kevin S. Xu received the B.A.Sc. degree in Electrical Engineering from the University of Waterloo in 2007 and the M.S.E. and Ph.D. degrees in Electrical Engineering: Systems from the University of Michigan in 2009 and 2012, respectively. He was a recipient of the Natural Sciences and Engineering Research Council of Canada (NSERC) Postgraduate Master’s and Doctorate Scholarships. He is currently an assistant professor in the EECS Department at the University of Toledo and has previously held industry research positions at Technicolor and 3M. His main research interests are in machine learning and statistical signal processing with applications to network science and human dynamics.

 

 

For more information on MIDAS or the Seminar Series, please contact midas-contact@umich.edu. MIDAS gratefully acknowledges Northrop Grumman Corporation for its generous support of the MIDAS Seminar Series.

Details

Date:
September 28
Time:
4:00 pm - 5:00 pm
Event Category:

Venue

Room 340 West Hall
1085 S University Ave
Ann Arbor, MI 48109 United States
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