Quiver Representations and Neural Networks
Offered By: Applied Algebraic Topology Network via YouTube
Course Description
Overview
Explore the fascinating intersection of quiver representations and neural networks in this 58-minute lecture. Delve into the fundamental concepts and objectives of quiver representation theory, with a focus on the algebraic-geometric approach using quiver moduli spaces. Discover how to model aspects of neural networks using quiver language and gain insights into both qualitative and quantitative perspectives on the space of network functions. Learn how quiver representations formalize classification problems in linear algebra and uncover their applications in understanding the structure and behavior of neural networks.
Syllabus
Markus Reineke (6/4/2024): Quiver representations and neural networks
Taught by
Applied Algebraic Topology Network
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