Using Topology to Study the Geometry of Neural Correlations
Offered By: Applied Algebraic Topology Network via YouTube
Course Description
Overview
Explore the application of topology in studying neural correlations through this insightful lecture. Delve into the concept of Betti curves of symmetric matrices, understanding their role as matrix invariants dependent on the relative ordering of matrix entries. Learn how persistent homology is used to compute these invariants and how they can reveal underlying structures in biological data that may be obscured by monotone nonlinearities. Examine previous applications of Betti curves in hippocampal and olfactory data studies. Discover new theorems characterizing Betti curves of rank 1 symmetric matrices and observe how these Betti curve signatures manifest in natural data obtained from calcium imaging of neural activity in zebrafish. Gain valuable insights into the intersection of topology, neuroscience, and data analysis in this comprehensive exploration of neural correlation geometry.
Syllabus
Carina Curto (09/08/23): Using topology to study the geometry of neural correlations
Taught by
Applied Algebraic Topology Network
Related Courses
Topology for Time SeriesData Science Dojo via YouTube Studying Fluid Flows with Persistent Homology - Rachel Levanger
Institute for Advanced Study via YouTube Persistence Diagram Bundles- A Multidimensional Generalization of Vineyards
Applied Algebraic Topology Network via YouTube GPU Accelerated Computation of VR Barcodes in Evaluating Deep Learning Models
Applied Algebraic Topology Network via YouTube New Results in Computing Zigzag and Multiparameter Persistence
Applied Algebraic Topology Network via YouTube