AAAI New Faculty Highlights

Exploiting Data Geometry in Machine Learning

Abstract

A key challenge in Machine Learning (ML) is the identification of geometric structure in high-dimensional data. Most algorithms assume that data lives in a high-dimensional vector space; however, many applications involve non-Euclidean data, such as graphs, strings and matrices, or data whose structure is determined by symmetries in the underlying system. Here, we discuss methods for identifying geometric structure in data and how leveraging data geometry can give rise to efficient ML algorithms with provable guarantees.

Date
Feb 23, 2024
Event
The 38th Annual AAAI Conference on Artificial Intelligence
Location
Vancouver, Canada
Melanie Weber
Melanie Weber
Assistant Professor