Mathematics Colloquium - Michael Perlmutter

Warning Icon This event is in the past.

When:
January 17, 2023
2:45 p.m. to 3:45 p.m.
Event category: Lecture
In-person
Speaker: Michael Perlmutter (University of  California, Los Angeles)

Title: Deep Learning on Graphs and Manifolds via the Geometric Scattering Transform

Abstract: Geometric Deep Learning is an emerging field of research that aims to extend the success of machine learning and, in particular, convolutional neural networks, to data with non-Euclidean geometric structure such as graphs and manifolds. Despite being in its relative infancy, this field has already found great success and is utilized by, e.g., Google Maps and Amazon's recommender systems.

In order to improve our understanding of the networks used in this new field, several works have proposed novel versions of the scattering transform, a wavelet-based model of neural networks for graphs, manifolds, and more general measure spaces. In a similar spirit to the original scattering transform, which was designed for Euclidean data such as images, these geometric scattering transforms provide a mathematically rigorous framework for understanding the stability and invariance of the networks used in geometric deep learning. Additionally, they also have many interesting applications such as discovering new drug-like molecules, solving combinatorial optimization problems, and using single-cell data to predict whether or not a cancer patient will respond to treatment.

Contact

Department of Mathematics
3135772479
math@wayne.edu

Cost

Free
January 2023
SU M TU W TH F SA
1234567
891011121314
15161718192021
22232425262728
2930311234