Nonlinear Dimensionality Reduction
- Speaker: Christian Bueno, University of California, Santa Barbara
Working with lower dimensional representations of data can be valuable for simplifying models, removing noise, and visualization. When data is distributed in geometrically complicated ways, tools such as PCA can quickly run into limitations due to their linear nature. In this tutorial, we will dive into dimension reduction for when data is distributed in ways that have nontrivial topology and curvature. We’ll build up our understanding of these approaches alongside classical ideas from topology and differential geometry and consider their interplay. Finally, we will explore some relationships between nonlinear dimension reduction and stochastic dynamics.
Christian Bueno is a mathematics PhD student at the University of California, Santa Barbara advised by Paul J. Atzberger. His research broadly focuses on theoretical properties of different machine learning methods for non-Euclidean problem domains. Previously, Christian has been a three-time intern at NASA Glenn Research Center and continues to collaborate on various projects.