Information Geometry of Markov Kernels – Faculty of Engineering

Information Geometry of Markov Kernels

Join us for the ECE Distinguished Research Lecture featuring Prof. Shun Watanabe from Tokyo University of Agriculture and Technology. Discover how information geometry offers powerful tools for understanding probability distributions, statistical hypothesis testing, and Markov kernels, with insights from Prof. Watanabe’s latest research.

About the Speaker

Shun Watanabe earned his B.E., M.E., and Ph.D. degrees from the Tokyo Institute of Technology in 2005, 2007, and 2009, respectively.

From 2009 to 2015, he served as an assistant professor at the University of Tokushima and was a visiting assistant professor at the University of Maryland from 2013 to 2015. He is currently an associate professor at the Tokyo University of Agriculture and Technology.

Prof. Watanabe has held notable leadership roles, including:

  • Associate Editor for the IEEE Transactions on Information Theory (2016–2020)
  • General Co-Chair of the 2021 IEEE Information Theory Workshop
  • Member of the Board of Governors of the IEEE Information Theory Society (2022–2024)
  • IEEE Information Theory Society Distinguished Lecturer (2023–2024)

His research focuses on information theory, coding, and their applications.

Who Should Attend?

This lecture will be of interest to:

  • Anyone interested in statistical methods, Markov processes, or the mathematics of information
  • Graduate students and researchers in electrical and computer engineering, mathematics, statistics, and physics
  • Industry professionals working in data science, information theory, and probabilistic modeling