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James Bagrow

Associate Professor, Department of Mathematics & Statistics

PRONOUNS he/him

Associate Professor James Bagrow
Pronouns he/him
Alma mater(s)
  • Ph.D., Physics, Clarkson University
  • M.S., Physics, Clarkson University
  • B.S., Physics with Great Distinction, Clarkson University
  • A.S., Liberal Arts & Sciences, SUNY Cobleskill, Cobleskill, NY, USA
Affiliated Department(s)

Department of Mathematics & Statistics

Department of Computer Science

Vermont Complex Systems Center

BIO

James Bagrow is an Associate Professor of Mathematics & Statistics at ¶¶Òõ̽̽ and a member of the Vermont Complex Systems Center. Before joining Vermont, he was a postdoctoral researcher at the Center for Complex Networks Research at Northeastern University and a research assistant professor at Northwestern University. Professor Bagrow received his Ph.D. in Physics from Clarkson University in 2008. He is interested in understanding the underlying rules and organizing principles of complex physical and social systems. His work combines mathematical models with large-scale data analysis to better understand these systems, with a particular emphasis on network science and human dynamics. Other interests include data science, stochastic and nonlinear dynamics, dynamical systems, and novel optimization and machine learning methods.

Courses

  • CS/STAT 3870 - Data Science I
  • CS/STAT 6870 - Data Science II
  • MATH 3201 - Advanced Engineering Mathematics

Area(s) of expertise

Network Science, Complex Systems, Data Science and Machine Learning, Computational Social Science, Mathematical Modeling

Bio

James Bagrow is an Associate Professor of Mathematics & Statistics at ¶¶Òõ̽̽ and a member of the Vermont Complex Systems Center. Before joining Vermont, he was a postdoctoral researcher at the Center for Complex Networks Research at Northeastern University and a research assistant professor at Northwestern University. Professor Bagrow received his Ph.D. in Physics from Clarkson University in 2008. He is interested in understanding the underlying rules and organizing principles of complex physical and social systems. His work combines mathematical models with large-scale data analysis to better understand these systems, with a particular emphasis on network science and human dynamics. Other interests include data science, stochastic and nonlinear dynamics, dynamical systems, and novel optimization and machine learning methods.

Courses

  • CS/STAT 3870 - Data Science I
  • CS/STAT 6870 - Data Science II
  • MATH 3201 - Advanced Engineering Mathematics

Areas of Expertise

Network Science, Complex Systems, Data Science and Machine Learning, Computational Social Science, Mathematical Modeling

Publications

Selected Publications:

  • (2010) YY Ahn, JP Bagrow, S Lehmann, Nature 466 (7307), 761–764
  • (2011) JP Bagrow, D Wang, AL Barabasi PloS one 6 (3), e17680
  • (2016) M Klug, JP Bagrow Royal Society open science 3 (4), 160007
  • (2018) D Berenberg, JP Bagrow Proceedings of the ACM on Human-Computer Interaction 2 (CSCW), 24
  • (2018) JP Bagrow, L Mitchell Chaos: An Interdisciplinary Journal of Nonlinear Science 28 (7), 075304
  • (2019) JP Bagrow, X Liu, L Mitchell Nature human behaviour 3 (2), 122