Hi all,
The zoom link in the below email seems to be causing some problems. Here is the link in case it is needed.
https://purdue-edu.zoom.us/j/93351017078
Shreyas
From: Satterfield, Mary Ann
Sent: Thursday, February 10, 2022 8:05 AM
To: ecefaculty@ecn.purdue.edu; ececourtesy-list@ecn.purdue.edu; 'CE Area Faculty' <ececompfaculty-list@ecn.purdue.edu>; ecepostdocs-list@ecn.purdue.edu; ecegradstudent-list@ecn.purdue.edu
Cc: Sundaram, Shreyas <sundara2@purdue.edu>
Subject: TODAY, 10:30A, PGSC: ACS Faculty Candidate Presentation: Luana Ruiz, PhD Candidate, UPenn: Machine Learning on Large-Scale Graphs
*** In person attendance is encouraged! ***
Host: Maggie Zhu ~
zhu0@purdue.edu
Faculty Candidate Seminar – Autonomous and Connected Systems
Luana
Ruiz
Ph.D. Candidate
Dept. of Electrical and Systems Engineering
University of Pennsylvania
Thursday, Feb. 10, 2022
Presentation: 10:30 A.M. – 11:30 A.M.
Q & A: 11:30 A.M. – 12:00 P.M.
Purdue
Graduate Student Center
504 Northwestern Ave. ~ Room 105A & B
https://purdue-edu.zoom.us/meeting/93351017078
Machine Learning on Large-Scale Graphs
Abstract:
Graph neural networks (GNNs) are successful at learning representations from most types of network data but suffer from limitations in large graphs, which do not have the Euclidean structure that time and
image signals have in the limit. Yet, large graphs can often be identified as being similar to each other in the sense that they share structural properties. Indeed, graphs can be grouped in families converging to a common graph limit -- the graphon. A graphon
is a bounded symmetric kernel which can be interpreted as both a random graph model and a limit object of a convergent sequence of graphs. Graphs sampled from a graphon almost surely share structural properties in the limit, which implies that graphons describe
families of similar graphs. We can thus expect that processing data supported on graphs associated with the same graphon should yield similar results. In my research, I formalize this intuition by showing that the error made when transferring a GNN across
two graphs in a graphon family is small when the graphs are sufficiently large. This enables large-scale graph machine learning by transference: training GNNs on moderate-scale graphs and executing them on large-scale graphs.
Bio:
Luana Ruiz received the B.Sc. degree in electrical engineering from the University of São Paulo, Brazil, and the M.Eng. degree in electrical engineering from the École Supérieure d'Electricité (now CentraleSupélec),
France, in 2017. She is currently a Ph.D. candidate with the Department of Electrical and Systems Engineering at the University of Pennsylvania. Her primary research interests are in large-scale graph machine learning and the mathematical foundations of deep
learning. Luana was awarded an Eiffel Excellence scholarship from the French Ministry for Europe and Foreign Affairs between 2013 and 2015, and nominated an iREDEFINE fellow in 2019 and a MIT EECS Rising Star in 2021. She has also received two Best Student
Paper awards at the European Signal Processing Conference (EUSIPCO), in 2019 and 2021.
Mary Ann Satterfield
Sr. Administrative Assistant
Elmore Family School of Electrical and Computer Engineering
Electrical Engineering Building
465 Northwestern Ave., BHEE 326B
West Lafayette, IN 47907
o: 765-494-6389 m: 765-490-6392 f: 765-494-2706