Seminar series
          
      Date
              Fri, 28 Jan 2022
      
      
          Time
        15:00 - 
        16:00
          Location
              L6
          Speaker
              Sarah Tymochko
          Organisation
              Michigan State University
          Topological data analysis (TDA) is a field with tools to quantify the shape of data in a manner that is concise and robust using concepts from algebraic topology. Persistent homology, one of the most popular tools in TDA, has proven useful in applications to time series data, detecting shape that changes over time and quantifying features like periodicity. In this talk, I will present two applications using tools from TDA to study time series data: the first using zigzag persistence, a generalization of persistent homology, to study bifurcations in dynamical systems and the second, using the shape of weighted, directed networks to distinguish periodic and chaotic behavior in time series data.