Mathematical Foundations of Graph-Based Bayesian Semi-Supervised Learning

Series
Applied and Computational Mathematics Seminar
Time
Monday, April 10, 2023 - 2:00pm for 1 hour (actually 50 minutes)
Location
Skiles 005 and https://gatech.zoom.us/j/98355006347
Speaker
Prof. Daniel Sanz-Alonso – U Chicago
Organizer
Molei Tao

Please Note: Speaker will present in person

Semi-supervised learning refers to the problem of recovering an input-output map using many unlabeled examples and a few labeled ones. In this talk I will survey several mathematical questions arising from the Bayesian formulation of graph-based semi-supervised learning. These questions include the modeling of prior distributions for functions on graphs, the derivation of continuum limits for the posterior, the design of scalable posterior sampling algorithms, and the contraction of the posterior in the large data limit.